Hough transform: Difference between revisions
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{{task|Image processing}} |
{{task|Image processing}} |
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[[Category:Graphics algorithms]] |
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Implement the [[wp:Hough transform|Hough transform]], which is used as part of feature extraction with digital images. It is a tool that makes it far easier to identify straight lines in the source image, whatever their orientation. |
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;Task: |
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Implement the [[wp:Hough transform|Hough transform]], which is used as part of feature extraction with digital images. |
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It is a tool that makes it far easier to identify straight lines in the source image, whatever their orientation. |
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The transform maps each point in the target image, <math>(\rho,\theta)</math>, to the average color of the pixels on the corresponding line of the source image (in <math>(x,y)</math>-space, where the line corresponds to points of the form <math>x\cos\theta + y\sin\theta = \rho</math>). The idea is that where there is a straight line in the original image, it corresponds to a bright (or dark, depending on the color of the background field) spot; by applying a suitable filter to the results of the transform, it is possible to extract the locations of the lines in the original image. |
The transform maps each point in the target image, <math>(\rho,\theta)</math>, to the average color of the pixels on the corresponding line of the source image (in <math>(x,y)</math>-space, where the line corresponds to points of the form <math>x\cos\theta + y\sin\theta = \rho</math>). The idea is that where there is a straight line in the original image, it corresponds to a bright (or dark, depending on the color of the background field) spot; by applying a suitable filter to the results of the transform, it is possible to extract the locations of the lines in the original image. |
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There is also a spherical Hough transform, which is more suited to identifying planes in 3D data. |
There is also a spherical Hough transform, which is more suited to identifying planes in 3D data. |
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<br><br> |
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=={{header|BBC BASIC}}== |
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{{works with|BBC BASIC for Windows}} |
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BBC BASIC uses Cartesian coordinates so the image is 'upside down' compared with some other solutions. |
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[[Image:hough_bbc.gif|right]] |
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<syntaxhighlight lang="bbcbasic"> Width% = 320 |
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Height% = 240 |
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VDU 23,22,Width%;Height%;8,16,16,128 |
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*DISPLAY Pentagon.bmp |
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OFF |
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DIM hist%(Width%-1, Height%-1) |
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rs = 2 * SQR(Width%^2 + Height%^2) / Height% : REM Radial step |
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ts = PI / Width% : REM Angular step |
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h% = Height% / 2 |
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REM Hough transform: |
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FOR y% = 0 TO Height%-1 |
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FOR x% = 0 TO Width%-1 |
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IF TINT(x%*2, y%*2) = 0 THEN |
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FOR t% = 0 TO Width%-1 |
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th = t% * ts |
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r% = (x%*COS(th) + y%*SIN(th)) / rs + h% + 0.5 |
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hist%(t%,r%) += 1 |
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NEXT |
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ENDIF |
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NEXT |
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NEXT y% |
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REM Find max: |
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max% = 0 |
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FOR y% = 0 TO Height%-1 |
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FOR x% = 0 TO Width%-1 |
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IF hist%(x%,y%) > max% max% = hist%(x%,y%) |
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NEXT |
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NEXT y% |
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REM Plot: |
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GCOL 1 |
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FOR y% = 0 TO Height%-1 |
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FOR x% = 0 TO Width%-1 |
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c% = 255 * hist%(x%,y%) / max% |
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COLOUR 1, c%, c%, c% |
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LINE x%*2,y%*2,x%*2,y%*2 |
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NEXT |
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NEXT y% |
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REPEAT |
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WAIT 1 |
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UNTIL FALSE</syntaxhighlight> |
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=={{header|C}}== |
=={{header|C}}== |
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{{incorrect|C|1. Code needs to do something to the parabolic shapes at the bottom of the output image, which are the edges of input image. 2. Processing input by rho/theta is wrong approach, should scan x/y of input image instead. 3. C code this slow is a shame.}} |
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{{trans|Tcl}} |
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* see [[Example:Hough transform/C]] |
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{{libheader|cairo}} |
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=={{header|D}}== |
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(Tested only with the pentagon image given) |
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{{trans|Go}} |
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<lang c>#include <stdio.h> |
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This uses the module from the Grayscale image Task. The output image is the same as in the Go solution. |
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#include <stdlib.h> |
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<syntaxhighlight lang="d">import std.math, grayscale_image; |
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#include <stdint.h> |
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#include <string.h> |
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#include <math.h> |
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Image!Gray houghTransform(in Image!Gray im, |
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#include <cairo.h> |
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in size_t hx=460, in size_t hy=360) |
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pure nothrow in { |
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assert(im !is null); |
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assert(hx > 0 && hy > 0); |
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assert((hy & 1) == 0, "hy argument must be even."); |
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} body { |
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auto result = new Image!Gray(hx, hy); |
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result.clear(Gray.white); |
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immutable double rMax = hypot(im.nx, im.ny); |
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#ifndef M_PI |
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immutable double dr = rMax / (hy / 2.0); |
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#define M_PI 3.1415927 |
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immutable double dTh = PI / hx; |
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#endif |
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foreach (immutable y; 0 .. im.ny) { |
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#define GR(X,Y) (d[(*s)*(Y)+bpp*(X)+((2)%bpp)]) |
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foreach (immutable x; 0 .. im.nx) { |
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#define GG(X,Y) (d[(*s)*(Y)+bpp*(X)+((1)%bpp)]) |
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if (im[x, y] == Gray.white) |
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#define GB(X,Y) (d[(*s)*(Y)+bpp*(X)+((0)%bpp)]) |
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continue; |
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#define SR(X,Y) (ht[4*tw*((Y)%th)+4*((X)%tw)+2]) |
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foreach (immutable iTh; 0 .. hx) { |
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#define SG(X,Y) (ht[4*tw*((Y)%th)+4*((X)%tw)+1]) |
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immutable double th = dTh * iTh; |
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#define SB(X,Y) (ht[4*tw*((Y)%th)+4*((X)%tw)+0]) |
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immutable double r = x * cos(th) + y * sin(th); |
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#define RAD(A) (M_PI*((double)(A))/180.0) |
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immutable iry = hy / 2 - cast(int)floor(r / dr + 0.5); |
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uint8_t *houghtransform(uint8_t *d, int *w, int *h, int *s, int bpp) |
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if (result[iTh, iry] > Gray(0)) |
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{ |
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result[iTh, iry]--; |
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} |
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} |
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uint8_t *ht = malloc(th*tw*4); |
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memset(ht, 0, 4*th*tw); // black bg |
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for(rho = 0; rho < th; rho++) |
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{ |
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for(theta = 0; theta < tw/*720*/; theta++) |
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{ |
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double C = cos(RAD(theta)); |
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double S = sin(RAD(theta)); |
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uint32_t totalred = 0; |
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uint32_t totalgreen = 0; |
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uint32_t totalblue = 0; |
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uint32_t totalpix = 0; |
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if ( theta < 45 || (theta > 135 && theta < 225) || theta > 315) { |
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for(y = 0; y < H; y++) { |
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double dx = W/2.0 + (rho - (H/2.0-y)*S)/C; |
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if ( dx < 0 || dx >= W ) continue; |
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x = floor(dx+.5); |
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if (x == W) continue; |
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totalpix++; |
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totalred += GR(x, y); |
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totalgreen += GG(x, y); |
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totalblue += GB(x, y); |
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} |
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} else { |
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for(x = 0; x < W; x++) { |
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double dy = H/2.0 - (rho - (x - W/2.0)*C)/S; |
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if ( dy < 0 || dy >= H ) continue; |
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y = floor(dy+.5); |
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if (y == H) continue; |
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totalpix++; |
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totalred += GR(x, y); |
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totalgreen += GG(x, y); |
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totalblue += GB(x, y); |
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} |
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} |
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if ( totalpix > 0 ) { |
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double dp = totalpix; |
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SR(theta, rho) = (int)(totalred/dp) &0xff; |
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SG(theta, rho) = (int)(totalgreen/dp) &0xff; |
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SB(theta, rho) = (int)(totalblue/dp) &0xff; |
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} |
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} |
} |
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return result; |
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} |
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} |
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void main() { |
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*h = th; // sqrt(W*W+H*H)/2 |
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(new Image!RGB) |
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.loadPPM6("Pentagon.ppm") |
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*s = 4*tw; |
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.rgb2grayImage() |
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return ht; |
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.houghTransform() |
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.savePGM("Pentagon_hough.pgm"); |
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}</syntaxhighlight> |
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=={{header|Go}}== |
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[[file:GoHough.png|right|thumb|Output png]] |
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{{trans|Python}} |
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<syntaxhighlight lang="go">package main |
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import ( |
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"fmt" |
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"image" |
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"image/color" |
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"image/draw" |
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"image/png" |
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"math" |
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"os" |
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) |
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func hough(im image.Image, ntx, mry int) draw.Image { |
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nimx := im.Bounds().Max.X |
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mimy := im.Bounds().Max.Y |
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him := image.NewGray(image.Rect(0, 0, ntx, mry)) |
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draw.Draw(him, him.Bounds(), image.NewUniform(color.White), |
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image.Point{}, draw.Src) |
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rmax := math.Hypot(float64(nimx), float64(mimy)) |
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dr := rmax / float64(mry/2) |
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dth := math.Pi / float64(ntx) |
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for jx := 0; jx < nimx; jx++ { |
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for iy := 0; iy < mimy; iy++ { |
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col := color.GrayModel.Convert(im.At(jx, iy)).(color.Gray) |
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if col.Y == 255 { |
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continue |
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} |
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for jtx := 0; jtx < ntx; jtx++ { |
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th := dth * float64(jtx) |
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r := float64(jx)*math.Cos(th) + float64(iy)*math.Sin(th) |
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iry := mry/2 - int(math.Floor(r/dr+.5)) |
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col = him.At(jtx, iry).(color.Gray) |
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if col.Y > 0 { |
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col.Y-- |
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him.SetGray(jtx, iry, col) |
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} |
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} |
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} |
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} |
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return him |
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} |
} |
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func main() { |
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f, err := os.Open("Pentagon.png") |
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{ |
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if err != nil { |
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cairo_surface_t *inputimg = NULL; |
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fmt.Println(err) |
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cairo_surface_t *houghimg = NULL; |
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return |
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} |
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uint8_t *houghdata = NULL, *inputdata = NULL; |
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pent, err := png.Decode(f) |
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int w, h, s, bpp; |
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if err != nil { |
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fmt.Println(err) |
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return |
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} |
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if err = f.Close(); err != nil { |
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fmt.Println(err) |
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} |
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h := hough(pent, 460, 360) |
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if f, err = os.Create("hough.png"); err != nil { |
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fmt.Println(err) |
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return |
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} |
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if err = png.Encode(f, h); err != nil { |
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fmt.Println(err) |
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} |
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if cErr := f.Close(); cErr != nil && err == nil { |
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fmt.Println(err) |
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} |
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}</syntaxhighlight> |
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=={{header|Haskell}}== |
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if ( argc < 3 ) return EXIT_FAILURE; |
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{{libheader|JuicyPixels}} |
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<syntaxhighlight lang="haskell">import Control.Monad (forM_, when) |
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inputimg = cairo_image_surface_create_from_png(argv[1]); |
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import Data.Array ((!)) |
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import Data.Array.ST (newArray, writeArray, readArray, runSTArray) |
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w = cairo_image_surface_get_width(inputimg); |
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import qualified Data.Foldable as F (maximum) |
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h = cairo_image_surface_get_height(inputimg); |
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import System.Environment (getArgs, getProgName) |
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s = cairo_image_surface_get_stride(inputimg); |
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bpp = cairo_image_surface_get_format(inputimg); |
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switch(bpp) |
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{ |
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case CAIRO_FORMAT_ARGB32: bpp = 4; break; |
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case CAIRO_FORMAT_RGB24: bpp = 3; break; |
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case CAIRO_FORMAT_A8: bpp = 1; break; |
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default: |
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fprintf(stderr, "unsupported\n"); |
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goto destroy; |
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} |
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-- Library JuicyPixels: |
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inputdata = cairo_image_surface_get_data(inputimg); |
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import Codec.Picture |
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houghdata = houghtransform(inputdata, &w, &h, &s, bpp); |
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(DynamicImage(ImageRGB8, ImageRGBA8), Image, PixelRGB8(PixelRGB8), |
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PixelRGBA8(PixelRGBA8), imageWidth, imageHeight, pixelAt, |
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printf("w=%d, h=%d\n", w, h); |
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generateImage, readImage, pixelMap, savePngImage) |
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houghimg = cairo_image_surface_create_for_data(houghdata, |
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import Codec.Picture.Types (extractLumaPlane, dropTransparency) |
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CAIRO_FORMAT_RGB24, |
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w, h, s); |
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cairo_surface_write_to_png(houghimg, argv[2]); |
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destroy: |
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if (inputimg != NULL) cairo_surface_destroy(inputimg); |
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if (houghimg != NULL) cairo_surface_destroy(houghimg); |
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dot |
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return EXIT_SUCCESS; |
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:: Num a |
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}</lang> |
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=> (a, a) -> (a, a) -> a |
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dot (x1, y1) (x2, y2) = x1 * x2 + y1 * y2 |
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mag |
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Output image (but with white background): |
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:: Floating a |
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=> (a, a) -> a |
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mag a = sqrt $ dot a a |
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sub |
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[[Image:Houghtrasf-c.png|thumb|left|360x200px|Output image when input is the given Pentagon.]] |
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:: Num a |
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<br style="clear:both" /> |
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=> (a, a) -> (a, a) -> (a, a) |
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sub (x1, y1) (x2, y2) = (x1 - x2, y1 - y2) |
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fromIntegralP |
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:: (Integral a, Num b) |
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=> (a, a) -> (b, b) |
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fromIntegralP (x, y) = (fromIntegral x, fromIntegral y) |
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{- |
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Create a Hough space image with y+ measuring the distance from |
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the center of the input image on the range of 0 to half the hypotenuse |
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and x+ measuring from [0, 2 * pi]. |
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The origin is in the upper left, so y is increasing down. |
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The image is scaled according to thetaSize and distSize. |
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-} |
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hough :: Image PixelRGB8 -> Int -> Int -> Image PixelRGB8 |
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hough image thetaSize distSize = hImage |
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where |
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width = imageWidth image |
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height = imageHeight image |
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wMax = width - 1 |
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hMax = height - 1 |
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xCenter = wMax `div` 2 |
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yCenter = hMax `div` 2 |
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lumaMap = extractLumaPlane image |
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gradient x y = |
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let orig = pixelAt lumaMap x y |
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x_ = pixelAt lumaMap (min (x + 1) wMax) y |
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y_ = pixelAt lumaMap x (min (y + 1) hMax) |
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in fromIntegralP (orig - x_, orig - y_) |
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gradMap = |
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[ ((x, y), gradient x y) |
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| x <- [0 .. wMax] |
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, y <- [0 .. hMax] ] |
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-- The longest distance from the center, half the hypotenuse of the image. |
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distMax :: Double |
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distMax = (sqrt . fromIntegral $ height ^ 2 + width ^ 2) / 2 |
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{- |
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The accumulation bins of the polar values. |
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For each value in the gradient image, if the gradient length exceeds |
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some threshold, consider it evidence of a line and plot all of the |
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lines that go through that point in Hough space. |
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-} |
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accBin = |
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runSTArray $ |
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do arr <- newArray ((0, 0), (thetaSize, distSize)) 0 |
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forM_ gradMap $ |
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\((x, y), grad) -> do |
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let (x_, y_) = fromIntegralP $ (xCenter, yCenter) `sub` (x, y) |
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when (mag grad > 127) $ |
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forM_ [0 .. thetaSize] $ |
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\theta -> do |
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let theta_ = |
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fromIntegral theta * 360 / fromIntegral thetaSize / 180 * |
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pi :: Double |
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dist = cos theta_ * x_ + sin theta_ * y_ |
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dist_ = truncate $ dist * fromIntegral distSize / distMax |
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idx = (theta, dist_) |
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when (dist_ >= 0 && dist_ < distSize) $ |
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do old <- readArray arr idx |
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writeArray arr idx $ old + 1 |
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return arr |
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maxAcc = F.maximum accBin |
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-- The image representation of the accumulation bins. |
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hTransform x y = |
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let l = 255 - truncate ((accBin ! (x, y)) / maxAcc * 255) |
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in PixelRGB8 l l l |
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hImage = generateImage hTransform thetaSize distSize |
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houghIO :: FilePath -> FilePath -> Int -> Int -> IO () |
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houghIO path outpath thetaSize distSize = do |
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image <- readImage path |
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case image of |
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Left err -> putStrLn err |
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Right (ImageRGB8 image_) -> doImage image_ |
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Right (ImageRGBA8 image_) -> doImage $ pixelMap dropTransparency image_ |
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_ -> putStrLn "Expecting RGB8 or RGBA8 image" |
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where |
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doImage image = do |
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let houghImage = hough image thetaSize distSize |
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savePngImage outpath $ ImageRGB8 houghImage |
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main :: IO () |
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main = do |
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args <- getArgs |
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prog <- getProgName |
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case args of |
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[path, outpath, thetaSize, distSize] -> |
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houghIO path outpath (read thetaSize) (read distSize) |
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_ -> |
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putStrLn $ |
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"Usage: " ++ prog ++ " <image-file> <out-file.png> <width> <height>"</syntaxhighlight> |
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'''Example use:''' |
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<syntaxhighlight lang="text">HoughTransform Pentagon.png hough.png 360 360</syntaxhighlight> |
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=={{header|J}}== |
=={{header|J}}== |
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'''Solution:''' |
'''Solution:''' |
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< |
<syntaxhighlight lang="j">NB.*houghTransform v Produces a density plot of image y in hough space |
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NB. y is picture as an array with 1 at non-white points, |
NB. y is picture as an array with 1 at non-white points, |
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NB. x is resolution (width,height) of resulting image |
NB. x is resolution (width,height) of resulting image |
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Line 150: | Line 323: | ||
rho=. <. 0.5+ h * (rho-min) % max-min NB. Rescale rho from 0 to h and round to int |
rho=. <. 0.5+ h * (rho-min) % max-min NB. Rescale rho from 0 to h and round to int |
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|.([: <:@(#/.~) (i.h)&,)"1&.|: rho NB. consolidate into picture |
|.([: <:@(#/.~) (i.h)&,)"1&.|: rho NB. consolidate into picture |
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)</ |
)</syntaxhighlight> |
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[[Image:JHoughTransform.png|320px200px|thumb|right|Resulting viewmat image from J implementation of Hough Transform on sample pentagon image]]'''Example use:''' |
[[Image:JHoughTransform.png|320px200px|thumb|right|Resulting viewmat image from J implementation of Hough Transform on sample pentagon image]]'''Example use:''' |
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<lang |
<syntaxhighlight lang="j"> require 'viewmat' |
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require 'media/platimg' NB. addon required pre J8 |
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Img=: readimg jpath '~temp/pentagon.png' |
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Img=: readimg_jqtide_ jpath '~temp/pentagon.png' |
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viewmat 460 360 houghTransform _1 > Img</lang> |
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viewmat 460 360 houghTransform _1 > Img</syntaxhighlight> |
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<br style="clear:both" /> |
<br style="clear:both" /> |
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=={{header| |
=={{header|Java}}== |
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'''Code:''' |
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This solution takes an image and the theta resolution as inputs. The image itself must be a 2-D boolean array. This array is constructed such that all of the pixels on an edge have the value "true." This can be done for a normal image using an "edge finding" algorithm to preprocess the image. In the case of the example image the pentagon "edges" are black pixels. So when the image is imported into MATLAB simply say any pixel colored black is true. The syntax is usually, cdata < 255. Where the vale 255 represents white and 0 represents black. |
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<syntaxhighlight lang="java">import java.awt.image.*; |
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import java.io.File; |
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import java.io.IOException; |
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import javax.imageio.*; |
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public class HoughTransform |
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<lang MATLAB>function [rho,theta,houghSpace] = houghTransform(theImage,thetaSampleFrequency) |
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{ |
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public static ArrayData houghTransform(ArrayData inputData, int thetaAxisSize, int rAxisSize, int minContrast) |
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%Define the hough space |
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{ |
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theImage = flipud(theImage); |
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int width = inputData.width; |
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int height = inputData.height; |
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int maxRadius = (int)Math.ceil(Math.hypot(width, height)); |
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int halfRAxisSize = rAxisSize >>> 1; |
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ArrayData outputData = new ArrayData(thetaAxisSize, rAxisSize); |
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// x output ranges from 0 to pi |
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// y output ranges from -maxRadius to maxRadius |
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double[] sinTable = new double[thetaAxisSize]; |
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double[] cosTable = new double[thetaAxisSize]; |
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for (int theta = thetaAxisSize - 1; theta >= 0; theta--) |
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{ |
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double thetaRadians = theta * Math.PI / thetaAxisSize; |
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sinTable[theta] = Math.sin(thetaRadians); |
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cosTable[theta] = Math.cos(thetaRadians); |
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} |
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for (int y = height - 1; y >= 0; y--) |
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{ |
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rho = (-rhoLimit:1:rhoLimit); |
|||
for (int x = width - 1; x >= 0; x--) |
|||
theta = (0:thetaSampleFrequency:pi); |
|||
{ |
|||
if (inputData.contrast(x, y, minContrast)) |
|||
{ |
|||
for (int theta = thetaAxisSize - 1; theta >= 0; theta--) |
|||
{ |
|||
double r = cosTable[theta] * x + sinTable[theta] * y; |
|||
int rScaled = (int)Math.round(r * halfRAxisSize / maxRadius) + halfRAxisSize; |
|||
outputData.accumulate(theta, rScaled, 1); |
|||
} |
|||
} |
|||
} |
|||
} |
|||
return outputData; |
|||
} |
|||
public static class ArrayData |
|||
{ |
|||
public final int[] dataArray; |
|||
public final int width; |
|||
public final int height; |
|||
public ArrayData(int width, int height) |
|||
numThetas = numel(theta); |
|||
{ |
|||
houghSpace = zeros(numel(rho),numThetas); |
|||
this(new int[width * height], width, height); |
|||
} |
|||
public ArrayData(int[] dataArray, int width, int height) |
|||
%Find the "edge" pixels |
|||
{ |
|||
[xIndicies,yIndicies] = find(theImage); |
|||
this.dataArray = dataArray; |
|||
this.width = width; |
|||
this.height = height; |
|||
} |
|||
public int get(int x, int y) |
|||
%Preallocate space for the accumulator array |
|||
{ return dataArray[y * width + x]; } |
|||
numEdgePixels = numel(xIndicies); |
|||
accumulator = zeros(numEdgePixels,numThetas); |
|||
public void set(int x, int y, int value) |
|||
%Preallocate cosine and sine calculations to increase speed. In |
|||
{ dataArray[y * width + x] = value; } |
|||
%addition to precallculating sine and cosine we are also multiplying |
|||
%them by the proper pixel weights such that the rows will be indexed by |
|||
%the pixel number and the columns will be indexed by the thetas. |
|||
%Example: cosine(3,:) is 2*cosine(0 to pi) |
|||
% cosine(:,1) is (0 to width of image)*cosine(0) |
|||
cosine = (0:width-1)'*cos(theta); %Matrix Outerproduct |
|||
sine = (0:height-1)'*sin(theta); %Matrix Outerproduct |
|||
public void accumulate(int x, int y, int delta) |
|||
accumulator((1:numEdgePixels),:) = cosine(xIndicies,:) + sine(yIndicies,:); |
|||
{ set(x, y, get(x, y) + delta); } |
|||
public boolean contrast(int x, int y, int minContrast) |
|||
{ |
|||
int centerValue = get(x, y); |
|||
for (int i = 8; i >= 0; i--) |
|||
{ |
|||
if (i == 4) |
|||
continue; |
|||
int newx = x + (i % 3) - 1; |
|||
int newy = y + (i / 3) - 1; |
|||
if ((newx < 0) || (newx >= width) || (newy < 0) || (newy >= height)) |
|||
continue; |
|||
if (Math.abs(get(newx, newy) - centerValue) >= minContrast) |
|||
return true; |
|||
} |
|||
return false; |
|||
} |
|||
public int getMax() |
|||
{ |
|||
int max = dataArray[0]; |
|||
for (int i = width * height - 1; i > 0; i--) |
|||
if (dataArray[i] > max) |
|||
max = dataArray[i]; |
|||
return max; |
|||
} |
|||
} |
|||
public static ArrayData getArrayDataFromImage(String filename) throws IOException |
|||
{ |
|||
BufferedImage inputImage = ImageIO.read(new File(filename)); |
|||
int width = inputImage.getWidth(); |
|||
int height = inputImage.getHeight(); |
|||
int[] rgbData = inputImage.getRGB(0, 0, width, height, null, 0, width); |
|||
ArrayData arrayData = new ArrayData(width, height); |
|||
// Flip y axis when reading image |
|||
for (int y = 0; y < height; y++) |
|||
{ |
|||
for (int x = 0; x < width; x++) |
|||
{ |
|||
int rgbValue = rgbData[y * width + x]; |
|||
rgbValue = (int)(((rgbValue & 0xFF0000) >>> 16) * 0.30 + ((rgbValue & 0xFF00) >>> 8) * 0.59 + (rgbValue & 0xFF) * 0.11); |
|||
arrayData.set(x, height - 1 - y, rgbValue); |
|||
} |
|||
} |
|||
return arrayData; |
|||
} |
|||
public static void writeOutputImage(String filename, ArrayData arrayData) throws IOException |
|||
{ |
|||
int max = arrayData.getMax(); |
|||
BufferedImage outputImage = new BufferedImage(arrayData.width, arrayData.height, BufferedImage.TYPE_INT_ARGB); |
|||
for (int y = 0; y < arrayData.height; y++) |
|||
{ |
|||
for (int x = 0; x < arrayData.width; x++) |
|||
{ |
|||
int n = Math.min((int)Math.round(arrayData.get(x, y) * 255.0 / max), 255); |
|||
outputImage.setRGB(x, arrayData.height - 1 - y, (n << 16) | (n << 8) | 0x90 | -0x01000000); |
|||
} |
|||
} |
|||
ImageIO.write(outputImage, "PNG", new File(filename)); |
|||
return; |
|||
} |
|||
public static void main(String[] args) throws IOException |
|||
{ |
|||
ArrayData inputData = getArrayDataFromImage(args[0]); |
|||
int minContrast = (args.length >= 4) ? 64 : Integer.parseInt(args[4]); |
|||
ArrayData outputData = houghTransform(inputData, Integer.parseInt(args[2]), Integer.parseInt(args[3]), minContrast); |
|||
writeOutputImage(args[1], outputData); |
|||
return; |
|||
} |
|||
}</syntaxhighlight> |
|||
[[Image:JavaHoughTransform.png|640px480px|thumb|right|Output from example pentagon image]]'''Example use:''' |
|||
%Scan over the thetas and bin the rhos |
|||
<pre>java HoughTransform pentagon.png JavaHoughTransform.png 640 480 100</pre> |
|||
for i = (1:numThetas) |
|||
<br style="clear:both" /> |
|||
houghSpace(:,i) = hist(accumulator(:,i),rho); |
|||
end |
|||
=={{header|Julia}}== |
|||
pcolor(theta,rho,houghSpace); |
|||
<syntaxhighlight lang="julia">using ImageFeatures |
|||
shading flat; |
|||
title('Hough Transform'); |
|||
xlabel('Theta (radians)'); |
|||
ylabel('Rho (pixels)'); |
|||
colormap('gray'); |
|||
img = fill(false,5,5) |
|||
end</lang> |
|||
img[3,:] .= true |
|||
println(hough_transform_standard(img)) |
|||
Sample Usage: |
|||
</syntaxhighlight> {{output}} <pre> |
|||
<lang MATLAB>>> uiopen('C:\Documents and Settings\owner\Desktop\Chris\MATLAB\RosettaCode\180px-Pentagon.png',1) |
|||
Tuple{Float64,Float64}[(3.0, 1.5708)] |
|||
>> houghTransform(cdata(:,:,1)<255,1/200); %The image from uiopen is stored in cdata. The reason why the image is cdata<255 is because the "edge" pixels are black.</lang> |
|||
</pre> |
|||
[[Image:HoughTransformHex.png|thumb|left|360x200px|Image produced by MATLAB implementation of the Hough transform when applied to the sample pentagon image.]] |
|||
<br style="clear:both" /> |
|||
=={{header|Kotlin}}== |
|||
{{trans|Java}} |
|||
<syntaxhighlight lang="scala">import java.awt.image.BufferedImage |
|||
import java.io.File |
|||
import javax.imageio.ImageIO |
|||
internal class ArrayData(val dataArray: IntArray, val width: Int, val height: Int) { |
|||
constructor(width: Int, height: Int) : this(IntArray(width * height), width, height) |
|||
operator fun get(x: Int, y: Int) = dataArray[y * width + x] |
|||
operator fun set(x: Int, y: Int, value: Int) { |
|||
dataArray[y * width + x] = value |
|||
} |
|||
operator fun invoke(thetaAxisSize: Int, rAxisSize: Int, minContrast: Int): ArrayData { |
|||
val maxRadius = Math.ceil(Math.hypot(width.toDouble(), height.toDouble())).toInt() |
|||
val halfRAxisSize = rAxisSize.ushr(1) |
|||
val outputData = ArrayData(thetaAxisSize, rAxisSize) |
|||
// x output ranges from 0 to pi |
|||
// y output ranges from -maxRadius to maxRadius |
|||
val sinTable = DoubleArray(thetaAxisSize) |
|||
val cosTable = DoubleArray(thetaAxisSize) |
|||
for (theta in thetaAxisSize - 1 downTo 0) { |
|||
val thetaRadians = theta * Math.PI / thetaAxisSize |
|||
sinTable[theta] = Math.sin(thetaRadians) |
|||
cosTable[theta] = Math.cos(thetaRadians) |
|||
} |
|||
for (y in height - 1 downTo 0) |
|||
for (x in width - 1 downTo 0) |
|||
if (contrast(x, y, minContrast)) |
|||
for (theta in thetaAxisSize - 1 downTo 0) { |
|||
val r = cosTable[theta] * x + sinTable[theta] * y |
|||
val rScaled = Math.round(r * halfRAxisSize / maxRadius).toInt() + halfRAxisSize |
|||
outputData.accumulate(theta, rScaled, 1) |
|||
} |
|||
return outputData |
|||
} |
|||
fun writeOutputImage(filename: String) { |
|||
val max = dataArray.max()!! |
|||
val image = BufferedImage(width, height, BufferedImage.TYPE_INT_ARGB) |
|||
for (y in 0..height - 1) |
|||
for (x in 0..width - 1) { |
|||
val n = Math.min(Math.round(this[x, y] * 255.0 / max).toInt(), 255) |
|||
image.setRGB(x, height - 1 - y, n shl 16 or (n shl 8) or 0x90 or -0x01000000) |
|||
} |
|||
ImageIO.write(image, "PNG", File(filename)) |
|||
} |
|||
private fun accumulate(x: Int, y: Int, delta: Int) { |
|||
set(x, y, get(x, y) + delta) |
|||
} |
|||
private fun contrast(x: Int, y: Int, minContrast: Int): Boolean { |
|||
val centerValue = get(x, y) |
|||
for (i in 8 downTo 0) |
|||
if (i != 4) { |
|||
val newx = x + i % 3 - 1 |
|||
val newy = y + i / 3 - 1 |
|||
if (newx >= 0 && newx < width && newy >= 0 && newy < height |
|||
&& Math.abs(get(newx, newy) - centerValue) >= minContrast) |
|||
return true |
|||
} |
|||
return false |
|||
} |
|||
} |
|||
internal fun readInputFromImage(filename: String): ArrayData { |
|||
val image = ImageIO.read(File(filename)) |
|||
val w = image.width |
|||
val h = image.height |
|||
val rgbData = image.getRGB(0, 0, w, h, null, 0, w) |
|||
// flip y axis when reading image |
|||
val array = ArrayData(w, h) |
|||
for (y in 0..h - 1) |
|||
for (x in 0..w - 1) { |
|||
var rgb = rgbData[y * w + x] |
|||
rgb = ((rgb and 0xFF0000).ushr(16) * 0.30 + (rgb and 0xFF00).ushr(8) * 0.59 + (rgb and 0xFF) * 0.11).toInt() |
|||
array[x, h - 1 - y] = rgb |
|||
} |
|||
return array |
|||
} |
|||
fun main(args: Array<out String>) { |
|||
val inputData = readInputFromImage(args[0]) |
|||
val minContrast = if (args.size >= 4) 64 else args[4].toInt() |
|||
inputData(args[2].toInt(), args[3].toInt(), minContrast).writeOutputImage(args[1]) |
|||
}</syntaxhighlight> |
|||
=={{header|Maple}}== |
|||
<syntaxhighlight lang="maple">with(ImageTools): |
|||
img := Read("pentagon.png")[..,..,1]: |
|||
img_x := Convolution (img, Matrix ([[1,2,1], [0,0,0],[-1,-2,-1]])): |
|||
img_y := Convolution (img, Matrix ([[-1,0,1],[-2,0,2],[-1,0,1]])): |
|||
img := Array (abs (img_x) + abs (img_y), datatype=float[8]): |
|||
countPixels := proc(M) |
|||
local r,c,i,j,row,col: |
|||
row := Array([]); |
|||
col := Array([]); |
|||
r,c := LinearAlgebra:-Dimensions(M); |
|||
for i from 1 to r do |
|||
for j from 1 to c do |
|||
if M[i,j] <> 0 then |
|||
ArrayTools:-Append(row, i, inplace=true): |
|||
ArrayTools:-Append(col, j, inplace=true): |
|||
end if: |
|||
end do: |
|||
end do: |
|||
return row,col: |
|||
end proc: |
|||
row,col := countPixels(img); |
|||
pTheta := proc(acc,r,c,x,y) |
|||
local j, pos: |
|||
for j from 1 to c do |
|||
pos := ceil(x*cos((j-1)*Pi/180)+y*sin((j-1)*Pi/180)+r/2): |
|||
acc[pos,j] := acc[pos,j]+1; |
|||
end do: |
|||
end proc: |
|||
HoughTransform := proc(img,row,col) |
|||
local r,c,pMax,theta,numThetas,numPs,acc,i: |
|||
r,c := LinearAlgebra:-Dimensions(img); |
|||
pMax := ceil(sqrt(r^2+c^2)): |
|||
theta := [seq(evalf(i), i = 1..181, 1)]: |
|||
numThetas := numelems(theta): |
|||
numPs := 2*pMax+1: |
|||
acc := Matrix(numPs, numThetas, fill=0,datatype=integer[4]): |
|||
for i from 1 to numelems(row) do |
|||
pTheta(acc,numPs,numThetas,col[i],row[i]): |
|||
end do: |
|||
return acc; |
|||
end proc: |
|||
result :=HoughTransform(img,row,col); |
|||
Embed(Scale(FitIntensity(Create(result)), 1..500,1..500));</syntaxhighlight> |
|||
=={{header|Mathematica}} / {{header|Wolfram Language}}== |
|||
<syntaxhighlight lang="mathematica"> |
|||
Radon[image, Method -> "Hough"] |
|||
</syntaxhighlight> |
|||
=={{header|MATLAB}}== |
|||
* see [[Example:Hough transform/MATLAB]] |
|||
=={{header|Nim}}== |
|||
{{trans|D}} |
|||
{{libheader|nimPNG}} |
|||
We use the modules from tasks “Bitmap” and “Grayscale image”, adding necessary conversions to read and write PNG files. |
|||
<syntaxhighlight lang="nim">import lenientops, math |
|||
import grayscale_image |
|||
const White = 255 |
|||
func houghTransform*(img: GrayImage; hx = 460; hy = 360): GrayImage = |
|||
assert not img.isNil |
|||
assert hx > 0 and hy > 0 |
|||
assert (hy and 1) == 0, "hy argument must be even" |
|||
result = newGrayImage(hx, hy) |
|||
result.fill(White) |
|||
let rMax = hypot(img.w.toFloat, img.h.toFloat) |
|||
let dr = rMax / (hy / 2) |
|||
let dTh = PI / hx |
|||
for y in 0..<img.h: |
|||
for x in 0..<img.w: |
|||
if img[x, y] == White: continue |
|||
for iTh in 0..<hx: |
|||
let th = dTh * iTh |
|||
let r = x * cos(th) + y * sin(th) |
|||
let iry = hy div 2 - (r / dr).toInt |
|||
if result[iTh, iry] > 0: |
|||
result[iTh, iry] = result[iTh, iry] - 1 |
|||
when isMainModule: |
|||
import nimPNG |
|||
import bitmap |
|||
const Input = "Pentagon.png" |
|||
const Output = "Hough.png" |
|||
let pngImage = loadPNG24(seq[byte], Input).get() |
|||
let grayImage = newGrayImage(pngImage.width, pngImage.height) |
|||
# Convert to grayscale. |
|||
for i in 0..grayImage.pixels.high: |
|||
grayImage.pixels[i] = Luminance(0.2126 * pngImage.data[3 * i] + |
|||
0.7152 * pngImage.data[3 * i + 1] + |
|||
0.0722 * pngImage.data[3 * i + 2] + 0.5) |
|||
# Apply Hough transform and convert to an RGB image. |
|||
let houghImage = grayImage.houghTransform().toImage() |
|||
# Save into a PNG file. |
|||
# As nimPNG expects a sequence of bytes, not a sequence of colors, we have to make a copy. |
|||
var data = newSeqOfCap[byte](houghImage.pixels.len * 3) |
|||
for color in houghImage.pixels: |
|||
data.add([color.r, color.g, color.b]) |
|||
discard savePNG24(Output, data, houghImage.w, houghImage.h)</syntaxhighlight> |
|||
=={{header|Perl}}== |
|||
{{trans|Sidef}} |
|||
<syntaxhighlight lang="perl">use strict; |
|||
use warnings; |
|||
use Imager; |
|||
use constant pi => 3.14159265; |
|||
sub hough { |
|||
my($im) = shift; |
|||
my($width) = shift || 460; |
|||
my($height) = shift || 360; |
|||
$height = 2 * int $height/2; |
|||
$height = 2 * int $height/2; |
|||
my($xsize, $ysize) = ($im->getwidth, $im->getheight); |
|||
my $ht = Imager->new(xsize => $width, ysize => $height); |
|||
my @canvas; |
|||
for my $i (0..$height-1) { for my $j (0..$width-1) { $canvas[$i][$j] = 255 } } |
|||
$ht->box(filled => 1, color => 'white'); |
|||
my $rmax = sqrt($xsize**2 + $ysize**2); |
|||
my $dr = 2 * $rmax / $height; |
|||
my $dth = pi / $width; |
|||
for my $x (0..$xsize-1) { |
|||
for my $y (0..$ysize-1) { |
|||
my $col = $im->getpixel(x => $x, y => $y); |
|||
my($r,$g,$b) = $col->rgba; |
|||
next if $r==255; # && $g==255 && $b==255; |
|||
for my $k (0..$width) { |
|||
my $th = $dth*$k; |
|||
my $r2 = ($x*cos($th) + $y*sin($th)); |
|||
my $iry = ($height/2 + int($r2/$dr + 0.5)); |
|||
$ht->setpixel(x => $k, y => $iry, color => [ ($canvas[$iry][$k]--) x 3] ); |
|||
} |
|||
} |
|||
} |
|||
return $ht; |
|||
} |
|||
my $img = Imager->new; |
|||
$img->read(file => 'ref/pentagon.png') or die "Cannot read: ", $img->errstr; |
|||
my $ht = hough($img); |
|||
$ht->write(file => 'hough_transform.png'); |
|||
</syntaxhighlight> |
|||
=={{header|Phix}}== |
|||
{{libheader|Phix/pGUI}} |
|||
{{trans|Sidef}} |
|||
<!--<syntaxhighlight lang="phix">(notonline)--> |
|||
<span style="color: #000080;font-style:italic;">-- demo\rosetta\Hough_transform.exw</span> |
|||
<span style="color: #008080;">without</span> <span style="color: #008080;">js</span> <span style="color: #000080;font-style:italic;">-- IupImage, imImage, im_width/height/pixel, allocate, |
|||
-- imFileImageLoadBitmap, IupImageFromImImage</span> |
|||
<span style="color: #008080;">include</span> <span style="color: #000000;">pGUI</span><span style="color: #0000FF;">.</span><span style="color: #000000;">e</span> |
|||
<span style="color: #008080;">function</span> <span style="color: #000000;">hypot</span><span style="color: #0000FF;">(</span><span style="color: #004080;">atom</span> <span style="color: #000000;">a</span><span style="color: #0000FF;">,</span><span style="color: #000000;">b</span><span style="color: #0000FF;">)</span> <span style="color: #008080;">return</span> <span style="color: #7060A8;">sqrt</span><span style="color: #0000FF;">(</span><span style="color: #000000;">a</span><span style="color: #0000FF;">*</span><span style="color: #000000;">a</span><span style="color: #0000FF;">+</span><span style="color: #000000;">b</span><span style="color: #0000FF;">*</span><span style="color: #000000;">b</span><span style="color: #0000FF;">)</span> <span style="color: #008080;">end</span> <span style="color: #008080;">function</span> |
|||
<span style="color: #008080;">function</span> <span style="color: #000000;">hough_transform</span><span style="color: #0000FF;">(</span><span style="color: #000000;">imImage</span> <span style="color: #000000;">im</span><span style="color: #0000FF;">,</span> <span style="color: #004080;">integer</span> <span style="color: #000000;">width</span><span style="color: #0000FF;">=</span><span style="color: #000000;">460</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">height</span><span style="color: #0000FF;">=</span><span style="color: #000000;">360</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #000000;">height</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">2</span><span style="color: #0000FF;">*</span><span style="color: #7060A8;">floor</span><span style="color: #0000FF;">(</span><span style="color: #000000;">height</span> <span style="color: #0000FF;">/</span> <span style="color: #000000;">2</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #004080;">integer</span> <span style="color: #000000;">xsize</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">im_width</span><span style="color: #0000FF;">(</span><span style="color: #000000;">im</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">ysize</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">im_height</span><span style="color: #0000FF;">(</span><span style="color: #000000;">im</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #004080;">sequence</span> <span style="color: #000000;">canvas</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">repeat</span><span style="color: #0000FF;">(</span><span style="color: #7060A8;">repeat</span><span style="color: #0000FF;">(</span><span style="color: #000000;">255</span><span style="color: #0000FF;">,</span><span style="color: #000000;">width</span><span style="color: #0000FF;">),</span><span style="color: #000000;">height</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #004080;">atom</span> <span style="color: #000000;">rmax</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">hypot</span><span style="color: #0000FF;">(</span><span style="color: #000000;">xsize</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">ysize</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">dr</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">2</span><span style="color: #0000FF;">*(</span><span style="color: #000000;">rmax</span> <span style="color: #0000FF;">/</span> <span style="color: #000000;">height</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">dth</span> <span style="color: #0000FF;">=</span> <span style="color: #0000FF;">(</span><span style="color: #004600;">PI</span> <span style="color: #0000FF;">/</span> <span style="color: #000000;">width</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #008080;">for</span> <span style="color: #000000;">y</span><span style="color: #0000FF;">=</span><span style="color: #000000;">0</span> <span style="color: #008080;">to</span> <span style="color: #000000;">ysize</span><span style="color: #0000FF;">-</span><span style="color: #000000;">1</span> <span style="color: #008080;">do</span> |
|||
<span style="color: #008080;">for</span> <span style="color: #000000;">x</span><span style="color: #0000FF;">=</span><span style="color: #000000;">0</span> <span style="color: #008080;">to</span> <span style="color: #000000;">xsize</span><span style="color: #0000FF;">-</span><span style="color: #000000;">1</span> <span style="color: #008080;">do</span> |
|||
<span style="color: #004080;">integer</span> <span style="color: #0000FF;">{</span><span style="color: #000000;">r</span><span style="color: #0000FF;">,</span><span style="color: #000000;">g</span><span style="color: #0000FF;">,</span><span style="color: #000000;">b</span><span style="color: #0000FF;">}</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">im_pixel</span><span style="color: #0000FF;">(</span><span style="color: #000000;">im</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">x</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">y</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #008080;">if</span> <span style="color: #000000;">r</span><span style="color: #0000FF;">!=</span><span style="color: #000000;">255</span> <span style="color: #008080;">then</span> |
|||
<span style="color: #008080;">for</span> <span style="color: #000000;">k</span><span style="color: #0000FF;">=</span><span style="color: #000000;">1</span> <span style="color: #008080;">to</span> <span style="color: #000000;">width</span> <span style="color: #008080;">do</span> |
|||
<span style="color: #004080;">atom</span> <span style="color: #000000;">th</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">dth</span><span style="color: #0000FF;">*(</span><span style="color: #000000;">k</span><span style="color: #0000FF;">-</span><span style="color: #000000;">1</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">r2</span> <span style="color: #0000FF;">=</span> <span style="color: #0000FF;">(</span><span style="color: #000000;">x</span><span style="color: #0000FF;">*</span><span style="color: #7060A8;">cos</span><span style="color: #0000FF;">(</span><span style="color: #000000;">th</span><span style="color: #0000FF;">)</span> <span style="color: #0000FF;">+</span> <span style="color: #000000;">y</span><span style="color: #0000FF;">*</span><span style="color: #7060A8;">sin</span><span style="color: #0000FF;">(</span><span style="color: #000000;">th</span><span style="color: #0000FF;">))</span> |
|||
<span style="color: #004080;">integer</span> <span style="color: #000000;">iry</span> <span style="color: #0000FF;">=</span> <span style="color: #0000FF;">(</span><span style="color: #000000;">height</span><span style="color: #0000FF;">/</span><span style="color: #000000;">2</span> <span style="color: #0000FF;">+</span> <span style="color: #7060A8;">floor</span><span style="color: #0000FF;">(</span><span style="color: #000000;">r2</span><span style="color: #0000FF;">/</span><span style="color: #000000;">dr</span> <span style="color: #0000FF;">+</span> <span style="color: #000000;">0.5</span><span style="color: #0000FF;">))+</span><span style="color: #000000;">1</span><span style="color: #0000FF;">,</span> |
|||
<span style="color: #000000;">cik</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">canvas</span><span style="color: #0000FF;">[</span><span style="color: #000000;">iry</span><span style="color: #0000FF;">][</span><span style="color: #000000;">k</span><span style="color: #0000FF;">]</span> <span style="color: #0000FF;">-</span> <span style="color: #000000;">1</span> |
|||
<span style="color: #008080;">if</span> <span style="color: #000000;">cik</span><span style="color: #0000FF;">>=</span><span style="color: #000000;">0</span> <span style="color: #008080;">then</span> |
|||
<span style="color: #000000;">canvas</span><span style="color: #0000FF;">[</span><span style="color: #000000;">iry</span><span style="color: #0000FF;">][</span><span style="color: #000000;">k</span><span style="color: #0000FF;">]</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">cik</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">if</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">for</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">if</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">for</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">for</span> |
|||
<span style="color: #000000;">canvas</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">flatten</span><span style="color: #0000FF;">(</span><span style="color: #000000;">canvas</span><span style="color: #0000FF;">)</span> <span style="color: #000080;font-style:italic;">-- (needed by IupImage)</span> |
|||
<span style="color: #004080;">Ihandle</span> <span style="color: #000000;">new_img</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">IupImage</span><span style="color: #0000FF;">(</span><span style="color: #000000;">width</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">height</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">canvas</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #008080;">for</span> <span style="color: #000000;">c</span><span style="color: #0000FF;">=</span><span style="color: #000000;">0</span> <span style="color: #008080;">to</span> <span style="color: #000000;">255</span> <span style="color: #008080;">do</span> |
|||
<span style="color: #000000;">IupSetStrAttributeId</span><span style="color: #0000FF;">(</span><span style="color: #000000;">new_img</span><span style="color: #0000FF;">,</span><span style="color: #008000;">""</span><span style="color: #0000FF;">,</span><span style="color: #000000;">c</span><span style="color: #0000FF;">,</span><span style="color: #008000;">"%d %d %d"</span><span style="color: #0000FF;">,{</span><span style="color: #000000;">c</span><span style="color: #0000FF;">,</span><span style="color: #000000;">c</span><span style="color: #0000FF;">,</span><span style="color: #000000;">c</span><span style="color: #0000FF;">})</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">for</span> |
|||
<span style="color: #008080;">return</span> <span style="color: #000000;">new_img</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">function</span> |
|||
<span style="color: #7060A8;">IupOpen</span><span style="color: #0000FF;">()</span> |
|||
<span style="color: #004080;">atom</span> <span style="color: #000000;">pError</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">allocate</span><span style="color: #0000FF;">(</span><span style="color: #7060A8;">machine_word</span><span style="color: #0000FF;">())</span> |
|||
<span style="color: #000000;">imImage</span> <span style="color: #000000;">im1</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">imFileImageLoadBitmap</span><span style="color: #0000FF;">(</span><span style="color: #008000;">"Pentagon320.png"</span><span style="color: #0000FF;">,</span><span style="color: #000000;">0</span><span style="color: #0000FF;">,</span><span style="color: #000000;">pError</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #008080;">if</span> <span style="color: #000000;">im1</span><span style="color: #0000FF;">=</span><span style="color: #004600;">NULL</span> <span style="color: #008080;">then</span> <span style="color: #0000FF;">?</span><span style="color: #008000;">"error opening Pentagon320.png"</span> <span style="color: #7060A8;">abort</span><span style="color: #0000FF;">(</span><span style="color: #000000;">0</span><span style="color: #0000FF;">)</span> <span style="color: #008080;">end</span> <span style="color: #008080;">if</span> |
|||
<span style="color: #004080;">Ihandln</span> <span style="color: #000000;">image1</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">IupImageFromImImage</span><span style="color: #0000FF;">(</span><span style="color: #000000;">im1</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">image2</span> <span style="color: #0000FF;">=</span> <span style="color: #000000;">hough_transform</span><span style="color: #0000FF;">(</span><span style="color: #000000;">im1</span><span style="color: #0000FF;">),</span> |
|||
<span style="color: #000000;">label1</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">IupLabel</span><span style="color: #0000FF;">(),</span> |
|||
<span style="color: #000000;">label2</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">IupLabel</span><span style="color: #0000FF;">()</span> |
|||
<span style="color: #7060A8;">IupSetAttributeHandle</span><span style="color: #0000FF;">(</span><span style="color: #000000;">label1</span><span style="color: #0000FF;">,</span> <span style="color: #008000;">"IMAGE"</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">image1</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #7060A8;">IupSetAttributeHandle</span><span style="color: #0000FF;">(</span><span style="color: #000000;">label2</span><span style="color: #0000FF;">,</span> <span style="color: #008000;">"IMAGE"</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">image2</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #004080;">Ihandle</span> <span style="color: #000000;">dlg</span> <span style="color: #0000FF;">=</span> <span style="color: #7060A8;">IupDialog</span><span style="color: #0000FF;">(</span><span style="color: #7060A8;">IupHbox</span><span style="color: #0000FF;">({</span><span style="color: #000000;">label1</span><span style="color: #0000FF;">,</span> <span style="color: #000000;">label2</span><span style="color: #0000FF;">}))</span> |
|||
<span style="color: #7060A8;">IupSetAttribute</span><span style="color: #0000FF;">(</span><span style="color: #000000;">dlg</span><span style="color: #0000FF;">,</span> <span style="color: #008000;">"TITLE"</span><span style="color: #0000FF;">,</span> <span style="color: #008000;">"Hough transform"</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #7060A8;">IupShow</span><span style="color: #0000FF;">(</span><span style="color: #000000;">dlg</span><span style="color: #0000FF;">)</span> |
|||
<span style="color: #008080;">if</span> <span style="color: #7060A8;">platform</span><span style="color: #0000FF;">()!=</span><span style="color: #004600;">JS</span> <span style="color: #008080;">then</span> <span style="color: #000080;font-style:italic;">-- (no chance...)</span> |
|||
<span style="color: #7060A8;">IupMainLoop</span><span style="color: #0000FF;">()</span> |
|||
<span style="color: #7060A8;">IupClose</span><span style="color: #0000FF;">()</span> |
|||
<span style="color: #008080;">end</span> <span style="color: #008080;">if</span> |
|||
<!--</syntaxhighlight>--> |
|||
=={{header|Python}}== |
=={{header|Python}}== |
||
{{libheader|PIL}} |
{{libheader|PIL}} |
||
This is the classical Hough transform as described in wikipedia. The code does not compute averages; it merely makes a point on the transformed image darker if a lot of points on the original image lie on the corresponding line. The output is almost identical to that of the Tcl code. The code works only with gray-scale images, but it is easy to extend to RGB. |
This is the classical Hough transform as described in wikipedia. The code does not compute averages; it merely makes a point on the transformed image darker if a lot of points on the original image lie on the corresponding line. The output is almost identical to that of the Tcl code. The code works only with gray-scale images, but it is easy to extend to RGB. |
||
< |
<syntaxhighlight lang="python"> |
||
from math import hypot, pi, cos, sin |
from math import hypot, pi, cos, sin |
||
import Image |
from PIL import Image |
||
Line 252: | Line 852: | ||
if __name__ == "__main__": test() |
if __name__ == "__main__": test() |
||
</syntaxhighlight> |
|||
</lang> |
|||
{{omit from|PARI/GP}} |
{{omit from|PARI/GP}} |
||
=={{header|Racket}}== |
|||
* see [[Hough transform/Racket]] |
|||
=={{header|Raku}}== |
|||
(formerly Perl 6) |
|||
The <code>GD</code> module the output palette to 255 colors, so only transform darker pixels in the image. |
|||
{{trans|Perl}} |
|||
<syntaxhighlight lang="raku" line>use GD; |
|||
my $filename = 'pentagon.ppm'; |
|||
my $in = open($filename, :r, :enc<iso-8859-1>); |
|||
my ($type, $dim, $depth) = $in.lines[^3]; |
|||
my ($xsize,$ysize) = split ' ', $dim; |
|||
my ($width, $height) = 460, 360; |
|||
my $image = GD::Image.new($width, $height); |
|||
my @canvas = [255 xx $width] xx $height; |
|||
my $rmax = sqrt($xsize**2 + $ysize**2); |
|||
my $dr = 2 * $rmax / $height; |
|||
my $dth = π / $width; |
|||
my $pixel = 0; |
|||
my %cstore; |
|||
for $in.lines.ords -> $r, $g, $b { |
|||
$pixel++; |
|||
next if $r > 130; |
|||
my $x = $pixel % $xsize; |
|||
my $y = floor $pixel / $xsize; |
|||
(^$width).map: -> $k { |
|||
my $th = $dth*$k; |
|||
my $r = ($x*cos($th) + $y*sin($th)); |
|||
my $iry = ($height/2 + ($r/$dr).round(1)).Int; |
|||
my $c = '#' ~ (@canvas[$iry][$k]--).base(16) x 3; |
|||
%cstore{$c} = $image.colorAllocate($c) if %cstore{$c}:!exists; |
|||
$image.pixel($k, $iry, %cstore{$c}); |
|||
} |
|||
} |
|||
my $png_fh = $image.open("hough-transform.png", "wb"); |
|||
$image.output($png_fh, GD_PNG); |
|||
$png_fh.close;</syntaxhighlight> |
|||
See [https://github.com/thundergnat/rc/blob/master/img/hough-transform.png Hough Transform] (offsite .png image) |
|||
=={{header|Ruby}}== |
|||
<syntaxhighlight lang="ruby"> |
|||
require 'mathn' |
|||
require 'rubygems' |
|||
require 'gd2' |
|||
include GD2 |
|||
def hough_transform(img) |
|||
mx, my = img.w*0.5, img.h*0.5 |
|||
max_d = Math.sqrt(mx**2 + my**2) |
|||
min_d = max_d * -1 |
|||
hough = Hash.new(0) |
|||
(0..img.w).each do |x| |
|||
puts "#{x} of #{img.w}" |
|||
(0..img.h).each do |y| |
|||
if img.pixel2color(img.get_pixel(x,y)).g > 32 |
|||
(0...180).each do |a| |
|||
rad = a * (Math::PI / 180.0) |
|||
d = (x-mx) * Math.cos(rad) + (y-my) * Math.sin(rad) |
|||
hough["#{a.to_i}_#{d.to_i}"] = hough["#{a.to_i}_#{d.to_i}"] + 1 |
|||
end |
|||
end |
|||
end |
|||
end |
|||
heat = GD2::Image.import 'heatmap.png' |
|||
out = GD2::Image::TrueColor.new(180,max_d*2) |
|||
max = hough.values.max |
|||
p max |
|||
hough.each_pair do |k,v| |
|||
a,d = k.split('_').map(&:to_i) |
|||
c = (v / max) * 255 |
|||
c = heat.get_pixel(c,0) |
|||
out.set_pixel(a, max_d + d, c) |
|||
end |
|||
out |
|||
end</syntaxhighlight> |
|||
=={{header|Rust}}== |
|||
<syntaxhighlight lang="rust"> |
|||
//! Contributed by Gavin Baker <gavinb@antonym.org> |
|||
//! Adapted from the Go version |
|||
use std::fs::File; |
|||
use std::io::{self, BufRead, BufReader, BufWriter, Read, Write}; |
|||
use std::iter::repeat; |
|||
/// Simple 8-bit grayscale image |
|||
struct ImageGray8 { |
|||
width: usize, |
|||
height: usize, |
|||
data: Vec<u8>, |
|||
} |
|||
fn load_pgm(filename: &str) -> io::Result<ImageGray8> { |
|||
// Open file |
|||
let mut file = BufReader::new(File::open(filename)?); |
|||
// Read header |
|||
let mut magic_in = String::new(); |
|||
let _ = file.read_line(&mut magic_in)?; |
|||
let mut width_in = String::new(); |
|||
let _ = file.read_line(&mut width_in)?; |
|||
let mut height_in = String::new(); |
|||
let _ = file.read_line(&mut height_in)?; |
|||
let mut maxval_in = String::new(); |
|||
let _ = file.read_line(&mut maxval_in)?; |
|||
assert_eq!(magic_in, "P5\n"); |
|||
assert_eq!(maxval_in, "255\n"); |
|||
// Parse header |
|||
let width = width_in |
|||
.trim() |
|||
.parse::<usize>() |
|||
.map_err(|_| io::ErrorKind::InvalidData)?; |
|||
let height: usize = height_in |
|||
.trim() |
|||
.parse::<usize>() |
|||
.map_err(|_| io::ErrorKind::InvalidData)?; |
|||
println!("Reading pgm file {}: {} x {}", filename, width, height); |
|||
// Create image and allocate buffer |
|||
let mut img = ImageGray8 { |
|||
width, |
|||
height, |
|||
data: vec![], |
|||
}; |
|||
// Read image data |
|||
let expected_bytes = width * height; |
|||
let bytes_read = file.read_to_end(&mut img.data)?; |
|||
if bytes_read != expected_bytes { |
|||
let kind = if bytes_read < expected_bytes { |
|||
io::ErrorKind::UnexpectedEof |
|||
} else { |
|||
io::ErrorKind::InvalidData |
|||
}; |
|||
let msg = format!("expected {} bytes", expected_bytes); |
|||
return Err(io::Error::new(kind, msg)); |
|||
} |
|||
Ok(img) |
|||
} |
|||
fn save_pgm(img: &ImageGray8, filename: &str) { |
|||
// Open file |
|||
let mut file = BufWriter::new(File::create(filename).unwrap()); |
|||
// Write header |
|||
if let Err(e) = writeln!(&mut file, "P5\n{}\n{}\n255", img.width, img.height) { |
|||
println!("Failed to write header: {}", e); |
|||
} |
|||
println!( |
|||
"Writing pgm file {}: {} x {}", |
|||
filename, img.width, img.height |
|||
); |
|||
// Write binary image data |
|||
if let Err(e) = file.write_all(&(img.data[..])) { |
|||
println!("Failed to image data: {}", e); |
|||
} |
|||
} |
|||
#[allow(clippy::cast_precision_loss)] |
|||
#[allow(clippy::clippy::cast_possible_truncation)] |
|||
fn hough(image: &ImageGray8, out_width: usize, out_height: usize) -> ImageGray8 { |
|||
let in_width = image.width; |
|||
let in_height = image.height; |
|||
// Allocate accumulation buffer |
|||
let out_height = ((out_height / 2) * 2) as usize; |
|||
let mut accum = ImageGray8 { |
|||
width: out_width, |
|||
height: out_height, |
|||
data: repeat(255).take(out_width * out_height).collect(), |
|||
}; |
|||
// Transform extents |
|||
let rmax = (in_width as f64).hypot(in_height as f64); |
|||
let dr = rmax / (out_height / 2) as f64; |
|||
let dth = std::f64::consts::PI / out_width as f64; |
|||
// Process input image in raster order |
|||
for y in 0..in_height { |
|||
for x in 0..in_width { |
|||
let in_idx = y * in_width + x; |
|||
let col = image.data[in_idx]; |
|||
if col == 255 { |
|||
continue; |
|||
} |
|||
// Project into rho,theta space |
|||
for jtx in 0..out_width { |
|||
let th = dth * (jtx as f64); |
|||
let r = (x as f64) * (th.cos()) + (y as f64) * (th.sin()); |
|||
let iry = out_height as i64 / 2 - (r / (dr as f64) + 0.5).floor() as i64; |
|||
#[allow(clippy::clippy::cast_sign_loss)] |
|||
let out_idx = (jtx as i64 + iry * out_width as i64) as usize; |
|||
let col = accum.data[out_idx]; |
|||
if col > 0 { |
|||
accum.data[out_idx] = col - 1; |
|||
} |
|||
} |
|||
} |
|||
} |
|||
accum |
|||
} |
|||
fn main() -> io::Result<()> { |
|||
let image = load_pgm("resources/Pentagon.pgm")?; |
|||
let accum = hough(&image, 460, 360); |
|||
save_pgm(&accum, "hough.pgm"); |
|||
Ok(()) |
|||
} |
|||
</syntaxhighlight> |
|||
=={{header|Scala}}== |
|||
{{trans|Kotlin}} |
|||
<syntaxhighlight lang="scala">import java.awt.image._ |
|||
import java.io.File |
|||
import javax.imageio._ |
|||
object HoughTransform extends App { |
|||
override def main(args: Array[String]) { |
|||
val inputData = readDataFromImage(args(0)) |
|||
val minContrast = if (args.length >= 4) 64 else args(4).toInt |
|||
inputData(args(2).toInt, args(3).toInt, minContrast).writeOutputImage(args(1)) |
|||
} |
|||
private def readDataFromImage(filename: String) = { |
|||
val image = ImageIO.read(new File(filename)) |
|||
val width = image.getWidth |
|||
val height = image.getHeight |
|||
val rgbData = image.getRGB(0, 0, width, height, null, 0, width) |
|||
val arrayData = new ArrayData(width, height) |
|||
for (y <- 0 until height; x <- 0 until width) { |
|||
var rgb = rgbData(y * width + x) |
|||
rgb = (((rgb & 0xFF0000) >>> 16) * 0.30 + ((rgb & 0xFF00) >>> 8) * 0.59 + |
|||
(rgb & 0xFF) * 0.11).toInt |
|||
arrayData(x, height - 1 - y) = rgb |
|||
} |
|||
arrayData |
|||
} |
|||
} |
|||
class ArrayData(val width: Int, val height: Int) { |
|||
def update(x: Int, y: Int, value: Int) { |
|||
dataArray(x)(y) = value |
|||
} |
|||
def apply(thetaAxisSize: Int, rAxisSize: Int, minContrast: Int) = { |
|||
val maxRadius = Math.ceil(Math.hypot(width, height)).toInt |
|||
val halfRAxisSize = rAxisSize >>> 1 |
|||
val outputData = new ArrayData(thetaAxisSize, rAxisSize) |
|||
val sinTable = Array.ofDim[Double](thetaAxisSize) |
|||
val cosTable = sinTable.clone() |
|||
for (theta <- thetaAxisSize - 1 until -1 by -1) { |
|||
val thetaRadians = theta * Math.PI / thetaAxisSize |
|||
sinTable(theta) = Math.sin(thetaRadians) |
|||
cosTable(theta) = Math.cos(thetaRadians) |
|||
} |
|||
for (y <- height - 1 until -1 by -1; x <- width - 1 until -1 by -1) |
|||
if (contrast(x, y, minContrast)) |
|||
for (theta <- thetaAxisSize - 1 until -1 by -1) { |
|||
val r = cosTable(theta) * x + sinTable(theta) * y |
|||
val rScaled = Math.round(r * halfRAxisSize / maxRadius).toInt + halfRAxisSize |
|||
outputData.dataArray(theta)(rScaled) += 1 |
|||
} |
|||
outputData |
|||
} |
|||
def writeOutputImage(filename: String) { |
|||
var max = Int.MinValue |
|||
for (y <- 0 until height; x <- 0 until width) { |
|||
val v = dataArray(x)(y) |
|||
if (v > max) max = v |
|||
} |
|||
val image = new BufferedImage(width, height, BufferedImage.TYPE_INT_ARGB) |
|||
for (y <- 0 until height; x <- 0 until width) { |
|||
val n = Math.min(Math.round(dataArray(x)(y) * 255.0 / max).toInt, 255) |
|||
image.setRGB(x, height - 1 - y, (n << 16) | (n << 8) | 0x90 | -0x01000000) |
|||
} |
|||
ImageIO.write(image, "PNG", new File(filename)) |
|||
} |
|||
private def contrast(x: Int, y: Int, minContrast: Int): Boolean = { |
|||
val centerValue = dataArray(x)(y) |
|||
for (i <- 8 until -1 by -1 if i != 4) { |
|||
val newx = x + (i % 3) - 1 |
|||
val newy = y + (i / 3) - 1 |
|||
if (newx >= 0 && newx < width && newy >= 0 && newy < height && |
|||
Math.abs(dataArray(newx)(newy) - centerValue) >= minContrast) |
|||
return true |
|||
} |
|||
false |
|||
} |
|||
private val dataArray = Array.ofDim[Int](width, height) |
|||
}</syntaxhighlight> |
|||
=={{header|SequenceL}}== |
|||
{{trans|Java}} |
|||
'''Tail-Recursive SequenceL Code:'''<br> |
|||
<syntaxhighlight lang="sequencel">import <Utilities/Sequence.sl>; |
|||
import <Utilities/Math.sl>; |
|||
hough: int(2) * int * int * int -> int(2); |
|||
hough(image(2), thetaAxisSize, rAxisSize, minContrast) := |
|||
let |
|||
initialResult[r,theta] := 0 foreach r within 1 ... rAxisSize, theta within 1 ... thetaAxisSize; |
|||
result := houghHelper(image, minContrast, 1, 1, initialResult); |
|||
max := vectorMax(vectorMax(result)); |
|||
in |
|||
255 - min(round((result * 255 / max)), 255); |
|||
houghHelper(image(2), minContrast, x, y, result(2)) := |
|||
let |
|||
thetaAxisSize := size(head(result)); |
|||
rAxisSize := size(result); |
|||
width := size(head(image)); |
|||
height := size(image); |
|||
maxRadius := ceiling(sqrt(width^2 + height^2)); |
|||
halfRAxisSize := rAxisSize / 2; |
|||
rs[theta] := round((cos(theta) * x + sin(theta) * y) * halfRAxisSize / maxRadius) + halfRAxisSize |
|||
foreach theta within (0 ... (thetaAxisSize-1)) * pi / thetaAxisSize; |
|||
newResult[r,theta] := result[r,theta] + 1 when rs[theta] = r-1 else result[r,theta]; |
|||
nextResult := result when not checkContrast(image, x, y, minContrast) else newResult; |
|||
nextX := 1 when x = width else x + 1; |
|||
nextY := y + 1 when x = width else y; |
|||
in |
|||
nextResult when x = width and y = height |
|||
else |
|||
houghHelper(image, minContrast, nextX, nextY, nextResult); |
|||
checkContrast(image(2), x, y, minContrast) := |
|||
let |
|||
neighbors[i,j] := image[i,j] when i > 0 and i < size(image) and j > 0 and j < size(image[i]) |
|||
foreach i within y-1 ... y+1, |
|||
j within x-1 ... x+1; |
|||
in |
|||
some(some(abs(image[y,x] - neighbors) >= minContrast));</syntaxhighlight> |
|||
'''C++ Driver Code:'''<br> |
|||
{{libheader|CImg}} |
|||
<syntaxhighlight lang="c">#include "SL_Generated.h" |
|||
#include "CImg.h" |
|||
using namespace cimg_library; |
|||
int main( int argc, char** argv ) |
|||
{ |
|||
string fileName = "Pentagon.bmp"; |
|||
if(argc > 1) fileName = argv[1]; |
|||
int thetaAxisSize = 640; if(argc > 2) thetaAxisSize = atoi(argv[2]); |
|||
int rAxisSize = 480; if(argc > 3) rAxisSize = atoi(argv[3]); |
|||
int minContrast = 64; if(argc > 4) minContrast = atoi(argv[4]); |
|||
int threads = 0; if(argc > 5) threads = atoi(argv[5]); |
|||
char titleBuffer[200]; |
|||
SLTimer t; |
|||
CImg<int> image(fileName.c_str()); |
|||
int imageDimensions[] = {image.height(), image.width(), 0}; |
|||
Sequence<Sequence<int> > imageSeq((void*) image.data(), imageDimensions); |
|||
Sequence< Sequence<int> > result; |
|||
sl_init(threads); |
|||
t.start(); |
|||
sl_hough(imageSeq, thetaAxisSize, rAxisSize, minContrast, threads, result); |
|||
t.stop(); |
|||
CImg<int> resultImage(result[1].size(), result.size()); |
|||
for(int y = 0; y < result.size(); y++) |
|||
for(int x = 0; x < result[y+1].size(); x++) |
|||
resultImage(x,result.size() - 1 - y) = result[y+1][x+1]; |
|||
sprintf(titleBuffer, "SequenceL Hough Transformation: %d X %d Image to %d X %d Result | %d Cores | Processed in %f sec\0", |
|||
image.width(), image.height(), resultImage.width(), resultImage.height(), threads, t.getTime()); |
|||
resultImage.display(titleBuffer); |
|||
sl_done(); |
|||
return 0; |
|||
}</syntaxhighlight> |
|||
{{out}} |
|||
[http://i.imgur.com/McCuZP3.png Output Screenshot] |
|||
=={{header|Sidef}}== |
|||
{{trans|Python}} |
|||
<syntaxhighlight lang="ruby">require('Imager') |
|||
func hough(im, width=460, height=360) { |
|||
height = 2*floor(height / 2) |
|||
var xsize = im.getwidth |
|||
var ysize = im.getheight |
|||
var ht = %s|Imager|.new(xsize => width, ysize => height) |
|||
var canvas = height.of { width.of(255) } |
|||
ht.box(filled => true, color => 'white') |
|||
var rmax = hypot(xsize, ysize) |
|||
var dr = 2*(rmax / height) |
|||
var dth = (Num.pi / width) |
|||
for y,x in (^ysize ~X ^xsize) { |
|||
var col = im.getpixel(x => x, y => y) |
|||
var (r,g,b) = col.rgba |
|||
(r==255 && g==255 && b==255) && next |
|||
for k in ^width { |
|||
var th = dth*k |
|||
var r = (x*cos(th) + y*sin(th)) |
|||
var iry = (height/2 + int(r/dr + 0.5)) |
|||
ht.setpixel(x => k, y => iry, color => 3.of(--canvas[iry][k])) |
|||
} |
|||
} |
|||
return ht |
|||
} |
|||
var img = %s|Imager|.new(file => 'Pentagon.png') |
|||
var ht = hough(img) |
|||
ht.write(file => 'Hough transform.png')</syntaxhighlight> |
|||
=={{header|Tcl}}== |
=={{header|Tcl}}== |
||
{{libheader|Tk}} |
{{libheader|Tk}} |
||
* See [[Example:Hough transform/Tcl]] |
|||
<lang tcl>package require Tk |
|||
=={{header|Wren}}== |
|||
set PI 3.1415927 |
|||
{{trans|Kotlin}} |
|||
proc HoughTransform {src trg {fieldColor "#000000"}} { |
|||
{{libheader|DOME}} |
|||
global PI |
|||
<syntaxhighlight lang="wren">import "graphics" for Canvas, Color, ImageData |
|||
import "dome" for Window, Process |
|||
import "math" for Math |
|||
var Hypot = Fn.new { |x, y| (x*x + y*y).sqrt } |
|||
set w [image width $src] |
|||
set h [image height $src] |
|||
set targetH [expr {int(hypot($w, $h)/2)}] |
|||
class ArrayData { |
|||
# Configure the target buffer |
|||
construct new(width, height) { |
|||
_width = width |
|||
$trg put $fieldColor -to 0 0 359 [expr {$targetH-1}] |
|||
_height = height |
|||
_dataArray = List.filled(width * height, 0) |
|||
} |
|||
width { _width } |
|||
# Iterate over the target's space of pixels. |
|||
height { _height } |
|||
for {set rho 0} {$rho < $targetH} {incr rho} { |
|||
set row {} |
|||
for {set theta 0} {$theta < 360} {incr theta} { |
|||
set cos [expr {cos($theta/180.0*$PI)}] |
|||
set sin [expr {sin($theta/180.0*$PI)}] |
|||
set totalRed 0 |
|||
set totalGreen 0 |
|||
set totalBlue 0 |
|||
set totalPix 0 |
|||
[x, y] { _dataArray[y * _width + x] } |
|||
# Sum the colors of the line with equation x*cos(θ) + y*sin(θ) = ρ |
|||
if {$theta<45 || ($theta>135 && $theta<225) || $theta>315} { |
|||
# For these half-quadrants, it's better to iterate by 'y' |
|||
for {set y 0} {$y<$h} {incr y} { |
|||
set x [expr { |
|||
$w/2 + ($rho - ($h/2-$y)*$sin)/$cos |
|||
}] |
|||
if {$x < 0 || $x >= $w} continue |
|||
set x [expr {round($x)}] |
|||
if {$x == $w} continue |
|||
incr totalPix |
|||
lassign [$src get $x $y] r g b |
|||
incr totalRed $r |
|||
incr totalGreen $g |
|||
incr totalBlue $b |
|||
} |
|||
} else { |
|||
# For the other half-quadrants, it's better to iterate by 'x' |
|||
for {set x 0} {$x<$w} {incr x} { |
|||
set y [expr { |
|||
$h/2 - ($rho - ($x-$w/2)*$cos)/$sin |
|||
}] |
|||
if {$y < 0 || $y >= $h} continue |
|||
set y [expr {round($y)}] |
|||
if {$y == $h} continue |
|||
incr totalPix |
|||
lassign [$src get $x $y] r g b |
|||
incr totalRed $r |
|||
incr totalGreen $g |
|||
incr totalBlue $b |
|||
} |
|||
} |
|||
[x, y]=(v) { _dataArray[y * _width + x] = v } |
|||
# Convert the summed colors back into a pixel for insertion into |
|||
# the target buffer. |
|||
transform(thetaAxisSize, rAxisSize, minContrast) { |
|||
if {$totalPix > 0} { |
|||
var maxRadius = Math.ceil(Hypot.call(_width, _height)) |
|||
set totalPix [expr {double($totalPix)}] |
|||
var halfRAxisSize = rAxisSize >> 1 |
|||
set col [format "#%02x%02x%02x" \ |
|||
var outputData = ArrayData.new(thetaAxisSize, rAxisSize) |
|||
[expr {round($totalRed/$totalPix)}] \ |
|||
// x output ranges from 0 to pi |
|||
[expr {round($totalGreen/$totalPix)}] \ |
|||
// y output ranges from -maxRadius to maxRadius |
|||
[expr {round($totalBlue/$totalPix)}]] |
|||
var sinTable = List.filled(thetaAxisSize, 0) |
|||
} else { |
|||
var cosTable = List.filled(thetaAxisSize, 0) |
|||
set col $fieldColor |
|||
for (theta in thetaAxisSize - 1..0) { |
|||
} |
|||
var thetaRadians = theta * Num.pi / thetaAxisSize |
|||
lappend row $col |
|||
sinTable[theta] = Math.sin(thetaRadians) |
|||
} |
|||
cosTable[theta] = Math.cos(thetaRadians) |
|||
$trg put [list $row] -to 0 $rho |
|||
} |
|||
for (y in _height - 1..0) { |
|||
for (x in _width - 1..0) { |
|||
if (contrast(x, y, minContrast)) { |
|||
for (theta in thetaAxisSize - 1..0) { |
|||
var r = cosTable[theta] * x + sinTable[theta] * y |
|||
var rScaled = Math.round(r * halfRAxisSize / maxRadius) + halfRAxisSize |
|||
outputData.accumulate(theta, rScaled, 1) |
|||
} |
|||
} |
|||
} |
|||
} |
|||
return outputData |
|||
} |
} |
||
}</lang> |
|||
accumulate(x, y, delta) { this[x, y] = this[x, y] + delta } |
|||
===Demonstration Code=== |
|||
Takes the name of the image to apply the transform to as an argument. If using PNG images, |
|||
contrast(x, y, minContrast) { |
|||
{{works with|Tk|8.6}} or {{libheader|TkImg}} |
|||
var centerValue = this[x, y] |
|||
<lang tcl># Demonstration code |
|||
for (i in 8..0) { |
|||
if {[catch { |
|||
if (i != 4) { |
|||
var newx = x + i % 3 - 1 |
|||
}] == 1} then {catch { |
|||
var newy = y + (i / 3).truncate - 1 |
|||
package require Img |
|||
if (newx >= 0 && newx < width && newy >= 0 && newy < height && |
|||
}} |
|||
Math.abs(this[newx, newy] - centerValue) >= minContrast) return true |
|||
# If neither Tk8.6 nor Img, then only GIF and PPM images can be loaded |
|||
} |
|||
} |
|||
return false |
|||
} |
|||
max { |
|||
set f [lindex $argv 0] |
|||
var max = _dataArray[0] |
|||
image create photo srcImg -file $f |
|||
for (i in width * height - 1..1) { |
|||
image create photo targetImg |
|||
if (_dataArray[i] > max) max = _dataArray[i] |
|||
pack [labelframe .l1 -text Source] [labelframe .l2 -text Target] |
|||
} |
|||
pack [label .l1.i -image srcImg] |
|||
return max |
|||
pack [label .l2.i -image targetImg] |
|||
} |
|||
# Postpone until after we've drawn ourselves |
|||
} |
|||
after idle HoughTransform srcImg targetImg [lrange $argv 1 end]</lang> |
|||
class HoughTransform { |
|||
[[Image:Hough-Pentagon-Tcl-Results.gif|thumb|left|360x200px|Image produced by Tcl implementation of the Hough transform when applied to the sample pentagon image.]] |
|||
construct new(inFile, outFile, width, height, minCont) { |
|||
Window.title = "Hough Transform" |
|||
Window.resize(width, height) |
|||
Canvas.resize(width, height) |
|||
_width = width |
|||
_height = height |
|||
_inFile = inFile |
|||
_outFile = outFile |
|||
_minCont = minCont |
|||
} |
|||
init() { |
|||
var dataArray = readInputFromImage(_inFile) |
|||
dataArray = dataArray.transform(_width, _height, _minCont) |
|||
writeOutputImage(_outFile, dataArray) |
|||
} |
|||
readInputFromImage(filename) { |
|||
var inputImage = ImageData.load(filename) |
|||
var width = inputImage.width |
|||
var height = inputImage.height |
|||
var rgbData = [] |
|||
for (y in 0...height) { |
|||
for (x in 0...width) rgbData.add(inputImage.pget(x, y)) |
|||
} |
|||
var arrayData = ArrayData.new(width, height) |
|||
// Flip y axis when reading image |
|||
for (y in 0...height) { |
|||
for (x in 0...width) { |
|||
var rgbValue = rgbData[y * width + x] |
|||
rgbValue = (rgbValue.r * 0.3 + rgbValue.g * 0.59 + rgbValue.b * 0.11).floor |
|||
arrayData[x, height - 1 - y] = rgbValue |
|||
} |
|||
} |
|||
return arrayData |
|||
} |
|||
writeOutputImage(filename, arrayData) { |
|||
var max = arrayData.max |
|||
var outputImage = ImageData.create(filename, arrayData.width, arrayData.height) |
|||
for (y in 0...arrayData.height) { |
|||
for (x in 0...arrayData.width) { |
|||
var n = Math.min(Math.round(arrayData[x, y] * 255 / max), 255) |
|||
var c = Color.new(n, n, 0x90) |
|||
outputImage.pset(x, arrayData.height - 1 - y, c) |
|||
} |
|||
} |
|||
outputImage.draw(0, 0) |
|||
outputImage.saveToFile(filename) |
|||
} |
|||
update() {} |
|||
draw(alpha) {} |
|||
} |
|||
var args = Process.args |
|||
System.print(args) |
|||
if (args.count != 7) Fiber.abort("There should be exactly 5 command line arguments.") |
|||
var inFile = args[2] |
|||
var outFile = args[3] |
|||
var width = Num.fromString(args[4]) |
|||
var height = Num.fromString(args[5]) |
|||
var minCont = Num.fromString(args[6]) |
|||
var Game = HoughTransform.new(inFile, outFile, width, height, minCont)</syntaxhighlight> |
|||
{{out}} |
|||
<pre> |
|||
When called with: 'dome hough_transform.wren Pentagon.png Pentagon2.png 640 480 100' the resulting image is similar to that of the Java entry. |
|||
</pre> |
|||
=={{header|zkl}}== |
|||
Uses the PPM class from http://rosettacode.org/wiki/Bitmap/Bresenham%27s_line_algorithm#zkl |
|||
{{trans|D}} |
|||
<syntaxhighlight lang="zkl">const WHITE=0xffFFff, X=0x010101; |
|||
fcn houghTransform(image,hx=460,hy=360){ |
|||
if(hy.isOdd) hy-=1; // hy argument must be even |
|||
out:=PPM(hx,hy,WHITE); |
|||
rMax:=image.w.toFloat().hypot(image.h); |
|||
dr,dTh:=rMax/(hy/2), (0.0).pi/hx; |
|||
foreach y,x in (image.h,image.w){ |
|||
if(image[x,y]==WHITE) continue; |
|||
foreach iTh in (hx){ |
|||
th,r:=dTh*iTh, th.cos()*x + th.sin()*y; |
|||
iry:=hy/2 + (r/dr + 0.5).floor(); // y==0 is top |
|||
if(out[iTh,iry]>0) out[iTh,iry]=out[iTh,iry] - X; |
|||
} |
|||
} |
|||
out |
|||
}</syntaxhighlight> |
|||
<syntaxhighlight lang="zkl">fcn readPNG2PPM(fileName){ |
|||
p:=System.popen("convert \"%s\" ppm:-".fmt(fileName),"r"); |
|||
img:=PPM.readPPM(p); |
|||
p.close(); |
|||
img |
|||
} |
|||
houghTransform(readPNG2PPM("pentagon.png")) |
|||
.write(File("pentagon_hough.ppm","wb"));</syntaxhighlight> |
|||
{{out}} |
|||
The output image looks the same as in the Go solution. |
|||
http://www.zenkinetic.com/Images/RosettaCode/pentagon_hough.jpg |
|||
{{omit from|PARI/GP}} |
{{omit from|PARI/GP}} |
||
[[Category:Geometry]] |
Latest revision as of 21:10, 9 December 2023
You are encouraged to solve this task according to the task description, using any language you may know.
- Task
Implement the Hough transform, which is used as part of feature extraction with digital images.
It is a tool that makes it far easier to identify straight lines in the source image, whatever their orientation.
The transform maps each point in the target image, , to the average color of the pixels on the corresponding line of the source image (in -space, where the line corresponds to points of the form ). The idea is that where there is a straight line in the original image, it corresponds to a bright (or dark, depending on the color of the background field) spot; by applying a suitable filter to the results of the transform, it is possible to extract the locations of the lines in the original image.
The target space actually uses polar coordinates, but is conventionally plotted on rectangular coordinates for display. There's no specification of exactly how to map polar coordinates to a flat surface for display, but a convenient method is to use one axis for and the other for , with the center of the source image being the origin.
There is also a spherical Hough transform, which is more suited to identifying planes in 3D data.
BBC BASIC
BBC BASIC uses Cartesian coordinates so the image is 'upside down' compared with some other solutions.
Width% = 320
Height% = 240
VDU 23,22,Width%;Height%;8,16,16,128
*DISPLAY Pentagon.bmp
OFF
DIM hist%(Width%-1, Height%-1)
rs = 2 * SQR(Width%^2 + Height%^2) / Height% : REM Radial step
ts = PI / Width% : REM Angular step
h% = Height% / 2
REM Hough transform:
FOR y% = 0 TO Height%-1
FOR x% = 0 TO Width%-1
IF TINT(x%*2, y%*2) = 0 THEN
FOR t% = 0 TO Width%-1
th = t% * ts
r% = (x%*COS(th) + y%*SIN(th)) / rs + h% + 0.5
hist%(t%,r%) += 1
NEXT
ENDIF
NEXT
NEXT y%
REM Find max:
max% = 0
FOR y% = 0 TO Height%-1
FOR x% = 0 TO Width%-1
IF hist%(x%,y%) > max% max% = hist%(x%,y%)
NEXT
NEXT y%
REM Plot:
GCOL 1
FOR y% = 0 TO Height%-1
FOR x% = 0 TO Width%-1
c% = 255 * hist%(x%,y%) / max%
COLOUR 1, c%, c%, c%
LINE x%*2,y%*2,x%*2,y%*2
NEXT
NEXT y%
REPEAT
WAIT 1
UNTIL FALSE
C
D
This uses the module from the Grayscale image Task. The output image is the same as in the Go solution.
import std.math, grayscale_image;
Image!Gray houghTransform(in Image!Gray im,
in size_t hx=460, in size_t hy=360)
pure nothrow in {
assert(im !is null);
assert(hx > 0 && hy > 0);
assert((hy & 1) == 0, "hy argument must be even.");
} body {
auto result = new Image!Gray(hx, hy);
result.clear(Gray.white);
immutable double rMax = hypot(im.nx, im.ny);
immutable double dr = rMax / (hy / 2.0);
immutable double dTh = PI / hx;
foreach (immutable y; 0 .. im.ny) {
foreach (immutable x; 0 .. im.nx) {
if (im[x, y] == Gray.white)
continue;
foreach (immutable iTh; 0 .. hx) {
immutable double th = dTh * iTh;
immutable double r = x * cos(th) + y * sin(th);
immutable iry = hy / 2 - cast(int)floor(r / dr + 0.5);
if (result[iTh, iry] > Gray(0))
result[iTh, iry]--;
}
}
}
return result;
}
void main() {
(new Image!RGB)
.loadPPM6("Pentagon.ppm")
.rgb2grayImage()
.houghTransform()
.savePGM("Pentagon_hough.pgm");
}
Go
package main
import (
"fmt"
"image"
"image/color"
"image/draw"
"image/png"
"math"
"os"
)
func hough(im image.Image, ntx, mry int) draw.Image {
nimx := im.Bounds().Max.X
mimy := im.Bounds().Max.Y
him := image.NewGray(image.Rect(0, 0, ntx, mry))
draw.Draw(him, him.Bounds(), image.NewUniform(color.White),
image.Point{}, draw.Src)
rmax := math.Hypot(float64(nimx), float64(mimy))
dr := rmax / float64(mry/2)
dth := math.Pi / float64(ntx)
for jx := 0; jx < nimx; jx++ {
for iy := 0; iy < mimy; iy++ {
col := color.GrayModel.Convert(im.At(jx, iy)).(color.Gray)
if col.Y == 255 {
continue
}
for jtx := 0; jtx < ntx; jtx++ {
th := dth * float64(jtx)
r := float64(jx)*math.Cos(th) + float64(iy)*math.Sin(th)
iry := mry/2 - int(math.Floor(r/dr+.5))
col = him.At(jtx, iry).(color.Gray)
if col.Y > 0 {
col.Y--
him.SetGray(jtx, iry, col)
}
}
}
}
return him
}
func main() {
f, err := os.Open("Pentagon.png")
if err != nil {
fmt.Println(err)
return
}
pent, err := png.Decode(f)
if err != nil {
fmt.Println(err)
return
}
if err = f.Close(); err != nil {
fmt.Println(err)
}
h := hough(pent, 460, 360)
if f, err = os.Create("hough.png"); err != nil {
fmt.Println(err)
return
}
if err = png.Encode(f, h); err != nil {
fmt.Println(err)
}
if cErr := f.Close(); cErr != nil && err == nil {
fmt.Println(err)
}
}
Haskell
import Control.Monad (forM_, when)
import Data.Array ((!))
import Data.Array.ST (newArray, writeArray, readArray, runSTArray)
import qualified Data.Foldable as F (maximum)
import System.Environment (getArgs, getProgName)
-- Library JuicyPixels:
import Codec.Picture
(DynamicImage(ImageRGB8, ImageRGBA8), Image, PixelRGB8(PixelRGB8),
PixelRGBA8(PixelRGBA8), imageWidth, imageHeight, pixelAt,
generateImage, readImage, pixelMap, savePngImage)
import Codec.Picture.Types (extractLumaPlane, dropTransparency)
dot
:: Num a
=> (a, a) -> (a, a) -> a
dot (x1, y1) (x2, y2) = x1 * x2 + y1 * y2
mag
:: Floating a
=> (a, a) -> a
mag a = sqrt $ dot a a
sub
:: Num a
=> (a, a) -> (a, a) -> (a, a)
sub (x1, y1) (x2, y2) = (x1 - x2, y1 - y2)
fromIntegralP
:: (Integral a, Num b)
=> (a, a) -> (b, b)
fromIntegralP (x, y) = (fromIntegral x, fromIntegral y)
{-
Create a Hough space image with y+ measuring the distance from
the center of the input image on the range of 0 to half the hypotenuse
and x+ measuring from [0, 2 * pi].
The origin is in the upper left, so y is increasing down.
The image is scaled according to thetaSize and distSize.
-}
hough :: Image PixelRGB8 -> Int -> Int -> Image PixelRGB8
hough image thetaSize distSize = hImage
where
width = imageWidth image
height = imageHeight image
wMax = width - 1
hMax = height - 1
xCenter = wMax `div` 2
yCenter = hMax `div` 2
lumaMap = extractLumaPlane image
gradient x y =
let orig = pixelAt lumaMap x y
x_ = pixelAt lumaMap (min (x + 1) wMax) y
y_ = pixelAt lumaMap x (min (y + 1) hMax)
in fromIntegralP (orig - x_, orig - y_)
gradMap =
[ ((x, y), gradient x y)
| x <- [0 .. wMax]
, y <- [0 .. hMax] ]
-- The longest distance from the center, half the hypotenuse of the image.
distMax :: Double
distMax = (sqrt . fromIntegral $ height ^ 2 + width ^ 2) / 2
{-
The accumulation bins of the polar values.
For each value in the gradient image, if the gradient length exceeds
some threshold, consider it evidence of a line and plot all of the
lines that go through that point in Hough space.
-}
accBin =
runSTArray $
do arr <- newArray ((0, 0), (thetaSize, distSize)) 0
forM_ gradMap $
\((x, y), grad) -> do
let (x_, y_) = fromIntegralP $ (xCenter, yCenter) `sub` (x, y)
when (mag grad > 127) $
forM_ [0 .. thetaSize] $
\theta -> do
let theta_ =
fromIntegral theta * 360 / fromIntegral thetaSize / 180 *
pi :: Double
dist = cos theta_ * x_ + sin theta_ * y_
dist_ = truncate $ dist * fromIntegral distSize / distMax
idx = (theta, dist_)
when (dist_ >= 0 && dist_ < distSize) $
do old <- readArray arr idx
writeArray arr idx $ old + 1
return arr
maxAcc = F.maximum accBin
-- The image representation of the accumulation bins.
hTransform x y =
let l = 255 - truncate ((accBin ! (x, y)) / maxAcc * 255)
in PixelRGB8 l l l
hImage = generateImage hTransform thetaSize distSize
houghIO :: FilePath -> FilePath -> Int -> Int -> IO ()
houghIO path outpath thetaSize distSize = do
image <- readImage path
case image of
Left err -> putStrLn err
Right (ImageRGB8 image_) -> doImage image_
Right (ImageRGBA8 image_) -> doImage $ pixelMap dropTransparency image_
_ -> putStrLn "Expecting RGB8 or RGBA8 image"
where
doImage image = do
let houghImage = hough image thetaSize distSize
savePngImage outpath $ ImageRGB8 houghImage
main :: IO ()
main = do
args <- getArgs
prog <- getProgName
case args of
[path, outpath, thetaSize, distSize] ->
houghIO path outpath (read thetaSize) (read distSize)
_ ->
putStrLn $
"Usage: " ++ prog ++ " <image-file> <out-file.png> <width> <height>"
Example use:
HoughTransform Pentagon.png hough.png 360 360
J
Solution:
NB.*houghTransform v Produces a density plot of image y in hough space
NB. y is picture as an array with 1 at non-white points,
NB. x is resolution (width,height) of resulting image
houghTransform=: dyad define
'w h'=. x NB. width and height of target image
theta=. o. (%~ 0.5+i.) w NB. theta in radians from 0 to π
rho=. (4$.$. |.y) +/ .* 2 1 o./theta NB. rho for each pixel at each theta
'min max'=. (,~-) +/&.:*: $y NB. min/max possible rho
rho=. <. 0.5+ h * (rho-min) % max-min NB. Rescale rho from 0 to h and round to int
|.([: <:@(#/.~) (i.h)&,)"1&.|: rho NB. consolidate into picture
)
Example use:
require 'viewmat'
require 'media/platimg' NB. addon required pre J8
Img=: readimg_jqtide_ jpath '~temp/pentagon.png'
viewmat 460 360 houghTransform _1 > Img
Java
Code:
import java.awt.image.*;
import java.io.File;
import java.io.IOException;
import javax.imageio.*;
public class HoughTransform
{
public static ArrayData houghTransform(ArrayData inputData, int thetaAxisSize, int rAxisSize, int minContrast)
{
int width = inputData.width;
int height = inputData.height;
int maxRadius = (int)Math.ceil(Math.hypot(width, height));
int halfRAxisSize = rAxisSize >>> 1;
ArrayData outputData = new ArrayData(thetaAxisSize, rAxisSize);
// x output ranges from 0 to pi
// y output ranges from -maxRadius to maxRadius
double[] sinTable = new double[thetaAxisSize];
double[] cosTable = new double[thetaAxisSize];
for (int theta = thetaAxisSize - 1; theta >= 0; theta--)
{
double thetaRadians = theta * Math.PI / thetaAxisSize;
sinTable[theta] = Math.sin(thetaRadians);
cosTable[theta] = Math.cos(thetaRadians);
}
for (int y = height - 1; y >= 0; y--)
{
for (int x = width - 1; x >= 0; x--)
{
if (inputData.contrast(x, y, minContrast))
{
for (int theta = thetaAxisSize - 1; theta >= 0; theta--)
{
double r = cosTable[theta] * x + sinTable[theta] * y;
int rScaled = (int)Math.round(r * halfRAxisSize / maxRadius) + halfRAxisSize;
outputData.accumulate(theta, rScaled, 1);
}
}
}
}
return outputData;
}
public static class ArrayData
{
public final int[] dataArray;
public final int width;
public final int height;
public ArrayData(int width, int height)
{
this(new int[width * height], width, height);
}
public ArrayData(int[] dataArray, int width, int height)
{
this.dataArray = dataArray;
this.width = width;
this.height = height;
}
public int get(int x, int y)
{ return dataArray[y * width + x]; }
public void set(int x, int y, int value)
{ dataArray[y * width + x] = value; }
public void accumulate(int x, int y, int delta)
{ set(x, y, get(x, y) + delta); }
public boolean contrast(int x, int y, int minContrast)
{
int centerValue = get(x, y);
for (int i = 8; i >= 0; i--)
{
if (i == 4)
continue;
int newx = x + (i % 3) - 1;
int newy = y + (i / 3) - 1;
if ((newx < 0) || (newx >= width) || (newy < 0) || (newy >= height))
continue;
if (Math.abs(get(newx, newy) - centerValue) >= minContrast)
return true;
}
return false;
}
public int getMax()
{
int max = dataArray[0];
for (int i = width * height - 1; i > 0; i--)
if (dataArray[i] > max)
max = dataArray[i];
return max;
}
}
public static ArrayData getArrayDataFromImage(String filename) throws IOException
{
BufferedImage inputImage = ImageIO.read(new File(filename));
int width = inputImage.getWidth();
int height = inputImage.getHeight();
int[] rgbData = inputImage.getRGB(0, 0, width, height, null, 0, width);
ArrayData arrayData = new ArrayData(width, height);
// Flip y axis when reading image
for (int y = 0; y < height; y++)
{
for (int x = 0; x < width; x++)
{
int rgbValue = rgbData[y * width + x];
rgbValue = (int)(((rgbValue & 0xFF0000) >>> 16) * 0.30 + ((rgbValue & 0xFF00) >>> 8) * 0.59 + (rgbValue & 0xFF) * 0.11);
arrayData.set(x, height - 1 - y, rgbValue);
}
}
return arrayData;
}
public static void writeOutputImage(String filename, ArrayData arrayData) throws IOException
{
int max = arrayData.getMax();
BufferedImage outputImage = new BufferedImage(arrayData.width, arrayData.height, BufferedImage.TYPE_INT_ARGB);
for (int y = 0; y < arrayData.height; y++)
{
for (int x = 0; x < arrayData.width; x++)
{
int n = Math.min((int)Math.round(arrayData.get(x, y) * 255.0 / max), 255);
outputImage.setRGB(x, arrayData.height - 1 - y, (n << 16) | (n << 8) | 0x90 | -0x01000000);
}
}
ImageIO.write(outputImage, "PNG", new File(filename));
return;
}
public static void main(String[] args) throws IOException
{
ArrayData inputData = getArrayDataFromImage(args[0]);
int minContrast = (args.length >= 4) ? 64 : Integer.parseInt(args[4]);
ArrayData outputData = houghTransform(inputData, Integer.parseInt(args[2]), Integer.parseInt(args[3]), minContrast);
writeOutputImage(args[1], outputData);
return;
}
}
Example use:
java HoughTransform pentagon.png JavaHoughTransform.png 640 480 100
Julia
using ImageFeatures
img = fill(false,5,5)
img[3,:] .= true
println(hough_transform_standard(img))
- Output:
Tuple{Float64,Float64}[(3.0, 1.5708)]
Kotlin
import java.awt.image.BufferedImage
import java.io.File
import javax.imageio.ImageIO
internal class ArrayData(val dataArray: IntArray, val width: Int, val height: Int) {
constructor(width: Int, height: Int) : this(IntArray(width * height), width, height)
operator fun get(x: Int, y: Int) = dataArray[y * width + x]
operator fun set(x: Int, y: Int, value: Int) {
dataArray[y * width + x] = value
}
operator fun invoke(thetaAxisSize: Int, rAxisSize: Int, minContrast: Int): ArrayData {
val maxRadius = Math.ceil(Math.hypot(width.toDouble(), height.toDouble())).toInt()
val halfRAxisSize = rAxisSize.ushr(1)
val outputData = ArrayData(thetaAxisSize, rAxisSize)
// x output ranges from 0 to pi
// y output ranges from -maxRadius to maxRadius
val sinTable = DoubleArray(thetaAxisSize)
val cosTable = DoubleArray(thetaAxisSize)
for (theta in thetaAxisSize - 1 downTo 0) {
val thetaRadians = theta * Math.PI / thetaAxisSize
sinTable[theta] = Math.sin(thetaRadians)
cosTable[theta] = Math.cos(thetaRadians)
}
for (y in height - 1 downTo 0)
for (x in width - 1 downTo 0)
if (contrast(x, y, minContrast))
for (theta in thetaAxisSize - 1 downTo 0) {
val r = cosTable[theta] * x + sinTable[theta] * y
val rScaled = Math.round(r * halfRAxisSize / maxRadius).toInt() + halfRAxisSize
outputData.accumulate(theta, rScaled, 1)
}
return outputData
}
fun writeOutputImage(filename: String) {
val max = dataArray.max()!!
val image = BufferedImage(width, height, BufferedImage.TYPE_INT_ARGB)
for (y in 0..height - 1)
for (x in 0..width - 1) {
val n = Math.min(Math.round(this[x, y] * 255.0 / max).toInt(), 255)
image.setRGB(x, height - 1 - y, n shl 16 or (n shl 8) or 0x90 or -0x01000000)
}
ImageIO.write(image, "PNG", File(filename))
}
private fun accumulate(x: Int, y: Int, delta: Int) {
set(x, y, get(x, y) + delta)
}
private fun contrast(x: Int, y: Int, minContrast: Int): Boolean {
val centerValue = get(x, y)
for (i in 8 downTo 0)
if (i != 4) {
val newx = x + i % 3 - 1
val newy = y + i / 3 - 1
if (newx >= 0 && newx < width && newy >= 0 && newy < height
&& Math.abs(get(newx, newy) - centerValue) >= minContrast)
return true
}
return false
}
}
internal fun readInputFromImage(filename: String): ArrayData {
val image = ImageIO.read(File(filename))
val w = image.width
val h = image.height
val rgbData = image.getRGB(0, 0, w, h, null, 0, w)
// flip y axis when reading image
val array = ArrayData(w, h)
for (y in 0..h - 1)
for (x in 0..w - 1) {
var rgb = rgbData[y * w + x]
rgb = ((rgb and 0xFF0000).ushr(16) * 0.30 + (rgb and 0xFF00).ushr(8) * 0.59 + (rgb and 0xFF) * 0.11).toInt()
array[x, h - 1 - y] = rgb
}
return array
}
fun main(args: Array<out String>) {
val inputData = readInputFromImage(args[0])
val minContrast = if (args.size >= 4) 64 else args[4].toInt()
inputData(args[2].toInt(), args[3].toInt(), minContrast).writeOutputImage(args[1])
}
Maple
with(ImageTools):
img := Read("pentagon.png")[..,..,1]:
img_x := Convolution (img, Matrix ([[1,2,1], [0,0,0],[-1,-2,-1]])):
img_y := Convolution (img, Matrix ([[-1,0,1],[-2,0,2],[-1,0,1]])):
img := Array (abs (img_x) + abs (img_y), datatype=float[8]):
countPixels := proc(M)
local r,c,i,j,row,col:
row := Array([]);
col := Array([]);
r,c := LinearAlgebra:-Dimensions(M);
for i from 1 to r do
for j from 1 to c do
if M[i,j] <> 0 then
ArrayTools:-Append(row, i, inplace=true):
ArrayTools:-Append(col, j, inplace=true):
end if:
end do:
end do:
return row,col:
end proc:
row,col := countPixels(img);
pTheta := proc(acc,r,c,x,y)
local j, pos:
for j from 1 to c do
pos := ceil(x*cos((j-1)*Pi/180)+y*sin((j-1)*Pi/180)+r/2):
acc[pos,j] := acc[pos,j]+1;
end do:
end proc:
HoughTransform := proc(img,row,col)
local r,c,pMax,theta,numThetas,numPs,acc,i:
r,c := LinearAlgebra:-Dimensions(img);
pMax := ceil(sqrt(r^2+c^2)):
theta := [seq(evalf(i), i = 1..181, 1)]:
numThetas := numelems(theta):
numPs := 2*pMax+1:
acc := Matrix(numPs, numThetas, fill=0,datatype=integer[4]):
for i from 1 to numelems(row) do
pTheta(acc,numPs,numThetas,col[i],row[i]):
end do:
return acc;
end proc:
result :=HoughTransform(img,row,col);
Embed(Scale(FitIntensity(Create(result)), 1..500,1..500));
Mathematica / Wolfram Language
Radon[image, Method -> "Hough"]
MATLAB
Nim
We use the modules from tasks “Bitmap” and “Grayscale image”, adding necessary conversions to read and write PNG files.
import lenientops, math
import grayscale_image
const White = 255
func houghTransform*(img: GrayImage; hx = 460; hy = 360): GrayImage =
assert not img.isNil
assert hx > 0 and hy > 0
assert (hy and 1) == 0, "hy argument must be even"
result = newGrayImage(hx, hy)
result.fill(White)
let rMax = hypot(img.w.toFloat, img.h.toFloat)
let dr = rMax / (hy / 2)
let dTh = PI / hx
for y in 0..<img.h:
for x in 0..<img.w:
if img[x, y] == White: continue
for iTh in 0..<hx:
let th = dTh * iTh
let r = x * cos(th) + y * sin(th)
let iry = hy div 2 - (r / dr).toInt
if result[iTh, iry] > 0:
result[iTh, iry] = result[iTh, iry] - 1
when isMainModule:
import nimPNG
import bitmap
const Input = "Pentagon.png"
const Output = "Hough.png"
let pngImage = loadPNG24(seq[byte], Input).get()
let grayImage = newGrayImage(pngImage.width, pngImage.height)
# Convert to grayscale.
for i in 0..grayImage.pixels.high:
grayImage.pixels[i] = Luminance(0.2126 * pngImage.data[3 * i] +
0.7152 * pngImage.data[3 * i + 1] +
0.0722 * pngImage.data[3 * i + 2] + 0.5)
# Apply Hough transform and convert to an RGB image.
let houghImage = grayImage.houghTransform().toImage()
# Save into a PNG file.
# As nimPNG expects a sequence of bytes, not a sequence of colors, we have to make a copy.
var data = newSeqOfCap[byte](houghImage.pixels.len * 3)
for color in houghImage.pixels:
data.add([color.r, color.g, color.b])
discard savePNG24(Output, data, houghImage.w, houghImage.h)
Perl
use strict;
use warnings;
use Imager;
use constant pi => 3.14159265;
sub hough {
my($im) = shift;
my($width) = shift || 460;
my($height) = shift || 360;
$height = 2 * int $height/2;
$height = 2 * int $height/2;
my($xsize, $ysize) = ($im->getwidth, $im->getheight);
my $ht = Imager->new(xsize => $width, ysize => $height);
my @canvas;
for my $i (0..$height-1) { for my $j (0..$width-1) { $canvas[$i][$j] = 255 } }
$ht->box(filled => 1, color => 'white');
my $rmax = sqrt($xsize**2 + $ysize**2);
my $dr = 2 * $rmax / $height;
my $dth = pi / $width;
for my $x (0..$xsize-1) {
for my $y (0..$ysize-1) {
my $col = $im->getpixel(x => $x, y => $y);
my($r,$g,$b) = $col->rgba;
next if $r==255; # && $g==255 && $b==255;
for my $k (0..$width) {
my $th = $dth*$k;
my $r2 = ($x*cos($th) + $y*sin($th));
my $iry = ($height/2 + int($r2/$dr + 0.5));
$ht->setpixel(x => $k, y => $iry, color => [ ($canvas[$iry][$k]--) x 3] );
}
}
}
return $ht;
}
my $img = Imager->new;
$img->read(file => 'ref/pentagon.png') or die "Cannot read: ", $img->errstr;
my $ht = hough($img);
$ht->write(file => 'hough_transform.png');
Phix
-- demo\rosetta\Hough_transform.exw without js -- IupImage, imImage, im_width/height/pixel, allocate, -- imFileImageLoadBitmap, IupImageFromImImage include pGUI.e function hypot(atom a,b) return sqrt(a*a+b*b) end function function hough_transform(imImage im, integer width=460, height=360) height = 2*floor(height / 2) integer xsize = im_width(im), ysize = im_height(im) sequence canvas = repeat(repeat(255,width),height) atom rmax = hypot(xsize, ysize), dr = 2*(rmax / height), dth = (PI / width) for y=0 to ysize-1 do for x=0 to xsize-1 do integer {r,g,b} = im_pixel(im, x, y) if r!=255 then for k=1 to width do atom th = dth*(k-1), r2 = (x*cos(th) + y*sin(th)) integer iry = (height/2 + floor(r2/dr + 0.5))+1, cik = canvas[iry][k] - 1 if cik>=0 then canvas[iry][k] = cik end if end for end if end for end for canvas = flatten(canvas) -- (needed by IupImage) Ihandle new_img = IupImage(width, height, canvas) for c=0 to 255 do IupSetStrAttributeId(new_img,"",c,"%d %d %d",{c,c,c}) end for return new_img end function IupOpen() atom pError = allocate(machine_word()) imImage im1 = imFileImageLoadBitmap("Pentagon320.png",0,pError) if im1=NULL then ?"error opening Pentagon320.png" abort(0) end if Ihandln image1 = IupImageFromImImage(im1), image2 = hough_transform(im1), label1 = IupLabel(), label2 = IupLabel() IupSetAttributeHandle(label1, "IMAGE", image1) IupSetAttributeHandle(label2, "IMAGE", image2) Ihandle dlg = IupDialog(IupHbox({label1, label2})) IupSetAttribute(dlg, "TITLE", "Hough transform") IupShow(dlg) if platform()!=JS then -- (no chance...) IupMainLoop() IupClose() end if
Python
This is the classical Hough transform as described in wikipedia. The code does not compute averages; it merely makes a point on the transformed image darker if a lot of points on the original image lie on the corresponding line. The output is almost identical to that of the Tcl code. The code works only with gray-scale images, but it is easy to extend to RGB.
from math import hypot, pi, cos, sin
from PIL import Image
def hough(im, ntx=460, mry=360):
"Calculate Hough transform."
pim = im.load()
nimx, mimy = im.size
mry = int(mry/2)*2 #Make sure that this is even
him = Image.new("L", (ntx, mry), 255)
phim = him.load()
rmax = hypot(nimx, mimy)
dr = rmax / (mry/2)
dth = pi / ntx
for jx in xrange(nimx):
for iy in xrange(mimy):
col = pim[jx, iy]
if col == 255: continue
for jtx in xrange(ntx):
th = dth * jtx
r = jx*cos(th) + iy*sin(th)
iry = mry/2 + int(r/dr+0.5)
phim[jtx, iry] -= 1
return him
def test():
"Test Hough transform with pentagon."
im = Image.open("pentagon.png").convert("L")
him = hough(im)
him.save("ho5.bmp")
if __name__ == "__main__": test()
Racket
Raku
(formerly Perl 6)
The GD
module the output palette to 255 colors, so only transform darker pixels in the image.
use GD;
my $filename = 'pentagon.ppm';
my $in = open($filename, :r, :enc<iso-8859-1>);
my ($type, $dim, $depth) = $in.lines[^3];
my ($xsize,$ysize) = split ' ', $dim;
my ($width, $height) = 460, 360;
my $image = GD::Image.new($width, $height);
my @canvas = [255 xx $width] xx $height;
my $rmax = sqrt($xsize**2 + $ysize**2);
my $dr = 2 * $rmax / $height;
my $dth = π / $width;
my $pixel = 0;
my %cstore;
for $in.lines.ords -> $r, $g, $b {
$pixel++;
next if $r > 130;
my $x = $pixel % $xsize;
my $y = floor $pixel / $xsize;
(^$width).map: -> $k {
my $th = $dth*$k;
my $r = ($x*cos($th) + $y*sin($th));
my $iry = ($height/2 + ($r/$dr).round(1)).Int;
my $c = '#' ~ (@canvas[$iry][$k]--).base(16) x 3;
%cstore{$c} = $image.colorAllocate($c) if %cstore{$c}:!exists;
$image.pixel($k, $iry, %cstore{$c});
}
}
my $png_fh = $image.open("hough-transform.png", "wb");
$image.output($png_fh, GD_PNG);
$png_fh.close;
See Hough Transform (offsite .png image)
Ruby
require 'mathn'
require 'rubygems'
require 'gd2'
include GD2
def hough_transform(img)
mx, my = img.w*0.5, img.h*0.5
max_d = Math.sqrt(mx**2 + my**2)
min_d = max_d * -1
hough = Hash.new(0)
(0..img.w).each do |x|
puts "#{x} of #{img.w}"
(0..img.h).each do |y|
if img.pixel2color(img.get_pixel(x,y)).g > 32
(0...180).each do |a|
rad = a * (Math::PI / 180.0)
d = (x-mx) * Math.cos(rad) + (y-my) * Math.sin(rad)
hough["#{a.to_i}_#{d.to_i}"] = hough["#{a.to_i}_#{d.to_i}"] + 1
end
end
end
end
heat = GD2::Image.import 'heatmap.png'
out = GD2::Image::TrueColor.new(180,max_d*2)
max = hough.values.max
p max
hough.each_pair do |k,v|
a,d = k.split('_').map(&:to_i)
c = (v / max) * 255
c = heat.get_pixel(c,0)
out.set_pixel(a, max_d + d, c)
end
out
end
Rust
//! Contributed by Gavin Baker <gavinb@antonym.org>
//! Adapted from the Go version
use std::fs::File;
use std::io::{self, BufRead, BufReader, BufWriter, Read, Write};
use std::iter::repeat;
/// Simple 8-bit grayscale image
struct ImageGray8 {
width: usize,
height: usize,
data: Vec<u8>,
}
fn load_pgm(filename: &str) -> io::Result<ImageGray8> {
// Open file
let mut file = BufReader::new(File::open(filename)?);
// Read header
let mut magic_in = String::new();
let _ = file.read_line(&mut magic_in)?;
let mut width_in = String::new();
let _ = file.read_line(&mut width_in)?;
let mut height_in = String::new();
let _ = file.read_line(&mut height_in)?;
let mut maxval_in = String::new();
let _ = file.read_line(&mut maxval_in)?;
assert_eq!(magic_in, "P5\n");
assert_eq!(maxval_in, "255\n");
// Parse header
let width = width_in
.trim()
.parse::<usize>()
.map_err(|_| io::ErrorKind::InvalidData)?;
let height: usize = height_in
.trim()
.parse::<usize>()
.map_err(|_| io::ErrorKind::InvalidData)?;
println!("Reading pgm file {}: {} x {}", filename, width, height);
// Create image and allocate buffer
let mut img = ImageGray8 {
width,
height,
data: vec![],
};
// Read image data
let expected_bytes = width * height;
let bytes_read = file.read_to_end(&mut img.data)?;
if bytes_read != expected_bytes {
let kind = if bytes_read < expected_bytes {
io::ErrorKind::UnexpectedEof
} else {
io::ErrorKind::InvalidData
};
let msg = format!("expected {} bytes", expected_bytes);
return Err(io::Error::new(kind, msg));
}
Ok(img)
}
fn save_pgm(img: &ImageGray8, filename: &str) {
// Open file
let mut file = BufWriter::new(File::create(filename).unwrap());
// Write header
if let Err(e) = writeln!(&mut file, "P5\n{}\n{}\n255", img.width, img.height) {
println!("Failed to write header: {}", e);
}
println!(
"Writing pgm file {}: {} x {}",
filename, img.width, img.height
);
// Write binary image data
if let Err(e) = file.write_all(&(img.data[..])) {
println!("Failed to image data: {}", e);
}
}
#[allow(clippy::cast_precision_loss)]
#[allow(clippy::clippy::cast_possible_truncation)]
fn hough(image: &ImageGray8, out_width: usize, out_height: usize) -> ImageGray8 {
let in_width = image.width;
let in_height = image.height;
// Allocate accumulation buffer
let out_height = ((out_height / 2) * 2) as usize;
let mut accum = ImageGray8 {
width: out_width,
height: out_height,
data: repeat(255).take(out_width * out_height).collect(),
};
// Transform extents
let rmax = (in_width as f64).hypot(in_height as f64);
let dr = rmax / (out_height / 2) as f64;
let dth = std::f64::consts::PI / out_width as f64;
// Process input image in raster order
for y in 0..in_height {
for x in 0..in_width {
let in_idx = y * in_width + x;
let col = image.data[in_idx];
if col == 255 {
continue;
}
// Project into rho,theta space
for jtx in 0..out_width {
let th = dth * (jtx as f64);
let r = (x as f64) * (th.cos()) + (y as f64) * (th.sin());
let iry = out_height as i64 / 2 - (r / (dr as f64) + 0.5).floor() as i64;
#[allow(clippy::clippy::cast_sign_loss)]
let out_idx = (jtx as i64 + iry * out_width as i64) as usize;
let col = accum.data[out_idx];
if col > 0 {
accum.data[out_idx] = col - 1;
}
}
}
}
accum
}
fn main() -> io::Result<()> {
let image = load_pgm("resources/Pentagon.pgm")?;
let accum = hough(&image, 460, 360);
save_pgm(&accum, "hough.pgm");
Ok(())
}
Scala
import java.awt.image._
import java.io.File
import javax.imageio._
object HoughTransform extends App {
override def main(args: Array[String]) {
val inputData = readDataFromImage(args(0))
val minContrast = if (args.length >= 4) 64 else args(4).toInt
inputData(args(2).toInt, args(3).toInt, minContrast).writeOutputImage(args(1))
}
private def readDataFromImage(filename: String) = {
val image = ImageIO.read(new File(filename))
val width = image.getWidth
val height = image.getHeight
val rgbData = image.getRGB(0, 0, width, height, null, 0, width)
val arrayData = new ArrayData(width, height)
for (y <- 0 until height; x <- 0 until width) {
var rgb = rgbData(y * width + x)
rgb = (((rgb & 0xFF0000) >>> 16) * 0.30 + ((rgb & 0xFF00) >>> 8) * 0.59 +
(rgb & 0xFF) * 0.11).toInt
arrayData(x, height - 1 - y) = rgb
}
arrayData
}
}
class ArrayData(val width: Int, val height: Int) {
def update(x: Int, y: Int, value: Int) {
dataArray(x)(y) = value
}
def apply(thetaAxisSize: Int, rAxisSize: Int, minContrast: Int) = {
val maxRadius = Math.ceil(Math.hypot(width, height)).toInt
val halfRAxisSize = rAxisSize >>> 1
val outputData = new ArrayData(thetaAxisSize, rAxisSize)
val sinTable = Array.ofDim[Double](thetaAxisSize)
val cosTable = sinTable.clone()
for (theta <- thetaAxisSize - 1 until -1 by -1) {
val thetaRadians = theta * Math.PI / thetaAxisSize
sinTable(theta) = Math.sin(thetaRadians)
cosTable(theta) = Math.cos(thetaRadians)
}
for (y <- height - 1 until -1 by -1; x <- width - 1 until -1 by -1)
if (contrast(x, y, minContrast))
for (theta <- thetaAxisSize - 1 until -1 by -1) {
val r = cosTable(theta) * x + sinTable(theta) * y
val rScaled = Math.round(r * halfRAxisSize / maxRadius).toInt + halfRAxisSize
outputData.dataArray(theta)(rScaled) += 1
}
outputData
}
def writeOutputImage(filename: String) {
var max = Int.MinValue
for (y <- 0 until height; x <- 0 until width) {
val v = dataArray(x)(y)
if (v > max) max = v
}
val image = new BufferedImage(width, height, BufferedImage.TYPE_INT_ARGB)
for (y <- 0 until height; x <- 0 until width) {
val n = Math.min(Math.round(dataArray(x)(y) * 255.0 / max).toInt, 255)
image.setRGB(x, height - 1 - y, (n << 16) | (n << 8) | 0x90 | -0x01000000)
}
ImageIO.write(image, "PNG", new File(filename))
}
private def contrast(x: Int, y: Int, minContrast: Int): Boolean = {
val centerValue = dataArray(x)(y)
for (i <- 8 until -1 by -1 if i != 4) {
val newx = x + (i % 3) - 1
val newy = y + (i / 3) - 1
if (newx >= 0 && newx < width && newy >= 0 && newy < height &&
Math.abs(dataArray(newx)(newy) - centerValue) >= minContrast)
return true
}
false
}
private val dataArray = Array.ofDim[Int](width, height)
}
SequenceL
Tail-Recursive SequenceL Code:
import <Utilities/Sequence.sl>;
import <Utilities/Math.sl>;
hough: int(2) * int * int * int -> int(2);
hough(image(2), thetaAxisSize, rAxisSize, minContrast) :=
let
initialResult[r,theta] := 0 foreach r within 1 ... rAxisSize, theta within 1 ... thetaAxisSize;
result := houghHelper(image, minContrast, 1, 1, initialResult);
max := vectorMax(vectorMax(result));
in
255 - min(round((result * 255 / max)), 255);
houghHelper(image(2), minContrast, x, y, result(2)) :=
let
thetaAxisSize := size(head(result));
rAxisSize := size(result);
width := size(head(image));
height := size(image);
maxRadius := ceiling(sqrt(width^2 + height^2));
halfRAxisSize := rAxisSize / 2;
rs[theta] := round((cos(theta) * x + sin(theta) * y) * halfRAxisSize / maxRadius) + halfRAxisSize
foreach theta within (0 ... (thetaAxisSize-1)) * pi / thetaAxisSize;
newResult[r,theta] := result[r,theta] + 1 when rs[theta] = r-1 else result[r,theta];
nextResult := result when not checkContrast(image, x, y, minContrast) else newResult;
nextX := 1 when x = width else x + 1;
nextY := y + 1 when x = width else y;
in
nextResult when x = width and y = height
else
houghHelper(image, minContrast, nextX, nextY, nextResult);
checkContrast(image(2), x, y, minContrast) :=
let
neighbors[i,j] := image[i,j] when i > 0 and i < size(image) and j > 0 and j < size(image[i])
foreach i within y-1 ... y+1,
j within x-1 ... x+1;
in
some(some(abs(image[y,x] - neighbors) >= minContrast));
C++ Driver Code:
#include "SL_Generated.h"
#include "CImg.h"
using namespace cimg_library;
int main( int argc, char** argv )
{
string fileName = "Pentagon.bmp";
if(argc > 1) fileName = argv[1];
int thetaAxisSize = 640; if(argc > 2) thetaAxisSize = atoi(argv[2]);
int rAxisSize = 480; if(argc > 3) rAxisSize = atoi(argv[3]);
int minContrast = 64; if(argc > 4) minContrast = atoi(argv[4]);
int threads = 0; if(argc > 5) threads = atoi(argv[5]);
char titleBuffer[200];
SLTimer t;
CImg<int> image(fileName.c_str());
int imageDimensions[] = {image.height(), image.width(), 0};
Sequence<Sequence<int> > imageSeq((void*) image.data(), imageDimensions);
Sequence< Sequence<int> > result;
sl_init(threads);
t.start();
sl_hough(imageSeq, thetaAxisSize, rAxisSize, minContrast, threads, result);
t.stop();
CImg<int> resultImage(result[1].size(), result.size());
for(int y = 0; y < result.size(); y++)
for(int x = 0; x < result[y+1].size(); x++)
resultImage(x,result.size() - 1 - y) = result[y+1][x+1];
sprintf(titleBuffer, "SequenceL Hough Transformation: %d X %d Image to %d X %d Result | %d Cores | Processed in %f sec\0",
image.width(), image.height(), resultImage.width(), resultImage.height(), threads, t.getTime());
resultImage.display(titleBuffer);
sl_done();
return 0;
}
- Output:
Sidef
require('Imager')
func hough(im, width=460, height=360) {
height = 2*floor(height / 2)
var xsize = im.getwidth
var ysize = im.getheight
var ht = %s|Imager|.new(xsize => width, ysize => height)
var canvas = height.of { width.of(255) }
ht.box(filled => true, color => 'white')
var rmax = hypot(xsize, ysize)
var dr = 2*(rmax / height)
var dth = (Num.pi / width)
for y,x in (^ysize ~X ^xsize) {
var col = im.getpixel(x => x, y => y)
var (r,g,b) = col.rgba
(r==255 && g==255 && b==255) && next
for k in ^width {
var th = dth*k
var r = (x*cos(th) + y*sin(th))
var iry = (height/2 + int(r/dr + 0.5))
ht.setpixel(x => k, y => iry, color => 3.of(--canvas[iry][k]))
}
}
return ht
}
var img = %s|Imager|.new(file => 'Pentagon.png')
var ht = hough(img)
ht.write(file => 'Hough transform.png')
Tcl
Wren
import "graphics" for Canvas, Color, ImageData
import "dome" for Window, Process
import "math" for Math
var Hypot = Fn.new { |x, y| (x*x + y*y).sqrt }
class ArrayData {
construct new(width, height) {
_width = width
_height = height
_dataArray = List.filled(width * height, 0)
}
width { _width }
height { _height }
[x, y] { _dataArray[y * _width + x] }
[x, y]=(v) { _dataArray[y * _width + x] = v }
transform(thetaAxisSize, rAxisSize, minContrast) {
var maxRadius = Math.ceil(Hypot.call(_width, _height))
var halfRAxisSize = rAxisSize >> 1
var outputData = ArrayData.new(thetaAxisSize, rAxisSize)
// x output ranges from 0 to pi
// y output ranges from -maxRadius to maxRadius
var sinTable = List.filled(thetaAxisSize, 0)
var cosTable = List.filled(thetaAxisSize, 0)
for (theta in thetaAxisSize - 1..0) {
var thetaRadians = theta * Num.pi / thetaAxisSize
sinTable[theta] = Math.sin(thetaRadians)
cosTable[theta] = Math.cos(thetaRadians)
}
for (y in _height - 1..0) {
for (x in _width - 1..0) {
if (contrast(x, y, minContrast)) {
for (theta in thetaAxisSize - 1..0) {
var r = cosTable[theta] * x + sinTable[theta] * y
var rScaled = Math.round(r * halfRAxisSize / maxRadius) + halfRAxisSize
outputData.accumulate(theta, rScaled, 1)
}
}
}
}
return outputData
}
accumulate(x, y, delta) { this[x, y] = this[x, y] + delta }
contrast(x, y, minContrast) {
var centerValue = this[x, y]
for (i in 8..0) {
if (i != 4) {
var newx = x + i % 3 - 1
var newy = y + (i / 3).truncate - 1
if (newx >= 0 && newx < width && newy >= 0 && newy < height &&
Math.abs(this[newx, newy] - centerValue) >= minContrast) return true
}
}
return false
}
max {
var max = _dataArray[0]
for (i in width * height - 1..1) {
if (_dataArray[i] > max) max = _dataArray[i]
}
return max
}
}
class HoughTransform {
construct new(inFile, outFile, width, height, minCont) {
Window.title = "Hough Transform"
Window.resize(width, height)
Canvas.resize(width, height)
_width = width
_height = height
_inFile = inFile
_outFile = outFile
_minCont = minCont
}
init() {
var dataArray = readInputFromImage(_inFile)
dataArray = dataArray.transform(_width, _height, _minCont)
writeOutputImage(_outFile, dataArray)
}
readInputFromImage(filename) {
var inputImage = ImageData.load(filename)
var width = inputImage.width
var height = inputImage.height
var rgbData = []
for (y in 0...height) {
for (x in 0...width) rgbData.add(inputImage.pget(x, y))
}
var arrayData = ArrayData.new(width, height)
// Flip y axis when reading image
for (y in 0...height) {
for (x in 0...width) {
var rgbValue = rgbData[y * width + x]
rgbValue = (rgbValue.r * 0.3 + rgbValue.g * 0.59 + rgbValue.b * 0.11).floor
arrayData[x, height - 1 - y] = rgbValue
}
}
return arrayData
}
writeOutputImage(filename, arrayData) {
var max = arrayData.max
var outputImage = ImageData.create(filename, arrayData.width, arrayData.height)
for (y in 0...arrayData.height) {
for (x in 0...arrayData.width) {
var n = Math.min(Math.round(arrayData[x, y] * 255 / max), 255)
var c = Color.new(n, n, 0x90)
outputImage.pset(x, arrayData.height - 1 - y, c)
}
}
outputImage.draw(0, 0)
outputImage.saveToFile(filename)
}
update() {}
draw(alpha) {}
}
var args = Process.args
System.print(args)
if (args.count != 7) Fiber.abort("There should be exactly 5 command line arguments.")
var inFile = args[2]
var outFile = args[3]
var width = Num.fromString(args[4])
var height = Num.fromString(args[5])
var minCont = Num.fromString(args[6])
var Game = HoughTransform.new(inFile, outFile, width, height, minCont)
- Output:
When called with: 'dome hough_transform.wren Pentagon.png Pentagon2.png 640 480 100' the resulting image is similar to that of the Java entry.
zkl
Uses the PPM class from http://rosettacode.org/wiki/Bitmap/Bresenham%27s_line_algorithm#zkl
const WHITE=0xffFFff, X=0x010101;
fcn houghTransform(image,hx=460,hy=360){
if(hy.isOdd) hy-=1; // hy argument must be even
out:=PPM(hx,hy,WHITE);
rMax:=image.w.toFloat().hypot(image.h);
dr,dTh:=rMax/(hy/2), (0.0).pi/hx;
foreach y,x in (image.h,image.w){
if(image[x,y]==WHITE) continue;
foreach iTh in (hx){
th,r:=dTh*iTh, th.cos()*x + th.sin()*y;
iry:=hy/2 + (r/dr + 0.5).floor(); // y==0 is top
if(out[iTh,iry]>0) out[iTh,iry]=out[iTh,iry] - X;
}
}
out
}
fcn readPNG2PPM(fileName){
p:=System.popen("convert \"%s\" ppm:-".fmt(fileName),"r");
img:=PPM.readPPM(p);
p.close();
img
}
houghTransform(readPNG2PPM("pentagon.png"))
.write(File("pentagon_hough.ppm","wb"));
- Output:
The output image looks the same as in the Go solution.
http://www.zenkinetic.com/Images/RosettaCode/pentagon_hough.jpg