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I want to compare two binary images and get an output as a result .

How can i do this ??

Can i use cvSobel() to do that??

Binary image has white edges and is there a way to count white pixels or something ???

Thank you !

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Please clarify what you mean by comparison. – Don Reba Aug 5 '11 at 8:07
I don't really get what you want to do. What is the desired result of the comparision of two images? An Image? A number? Sure you can use the sobel filter to find edges. Do you want to compare edges of two images? Do you want to make a convolution to detect if the egdes lie on each other? – tgmath Aug 5 '11 at 8:07

try cv::compare:

cv::Mat img1 = ...
cv::Mat img2 = ...
cv::Mat result = ...

int threshold = (double)(img1.rows * img1.cols) * 0.7; 

cv::compare(img1 , img2  , result , cv::CMP_EQ );
int similarPixels  = countNonZero(result);

if ( similarPixels  > threshold ) {
   cout << "similar" << endl;
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Here is a function that I have written, based on the following paper. (One should CHECK my CODE! it would be greatly appreciated!) Paper to look after: A J Baddeley: An error metric for binary images

Also the author has a statistic package, where the code can be found. It is called "spatstat" To use the spatstat first download the R-Stat from The error metric is available as a function called 'deltametric'. To see the help file, type help(deltametric).

Description of code: The input of this function two filename, which should be binary image files! The return value is the Baddeley Error metric number. One should include the OpenCV headers and namespace also!

float baddeleyerror (const char * a_file, const char* b_file)
Mat A,B,Adist,Bdist,Z;
double c=5;
double p=2;
double nelem;
double minval, maxval;




min(Adist, c, Adist);
min(Bdist, c, Bdist);

minMaxLoc(Adist, &minval, &maxval, 0, 0);
Adist.convertTo(Adist, CV_8UC1, 255/maxval, 1);

minMaxLoc(Bdist, &minval, &maxval, 0, 0);
Bdist.convertTo(Bdist, CV_8UC1, 255/maxval, 1);


return (pow(sum(Z).val[0]/nelem, 1/p));
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Why not use a straightforward comparison? (pixel by pixel) Sobel will take you O(pixels) anyway, so comparing pixel to pixel won't change complexity.

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