how can I make 2d auto-correlation and 2d cross-correlation for images dataset
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I want to classify an image based on 1. make 2D auto-correlation for a dataset 2. then make 2D cross-correlation for the same dataset with an image to measure the similrity. 3. Ater that find the MSE between 2D auto-correlation and 2D cross-correlation. 4. classify the image to the class get the minimum Mean square error (MSE) if true % code
%the normalized 2-D cross-correlation
trainedIamge = gpuArray(Final) %Final is binary image
testImage = gpuArray(Final1) %Final1 is binary image
c1 = normxcorr2(trainedIamge,testImage);
%figure, surf(c), shading flat
[ypeak, xpeak] = find(c==max(c(:)))
c2 = normxcorr2(trainedIamge,trainedIamge); % I don't know how I make it Auto correlation
%figure, surf(c), shading flat
end
I used the following code for finding MSE between 2D auto-correlation and 2D cross-correlation but it gave me an error.
if true
% code
err = immse(mat2gray(c1),mat2gray(c2))
end
I converted c1 and c2 onto grayscale images because it gave an error about the datatypes. the above code is for one image. Do I have to make a loop for a dataset or there is a specific method?
thanks
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Respuestas (1)
Image Analyst
el 23 de Mzo. de 2018
Yes you need to have a loop. See the FAQ for code examples: http://matlab.wikia.com/wiki/FAQ#How_can_I_process_a_sequence_of_files.3F
2 comentarios
Image Analyst
el 26 de Mzo. de 2018
That is the autocorrelation. But it's normalized. You can use xcorr2(). Then use immse() to get the mean square error.
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