Fastest way to process image patches?
3 visualizzazioni (ultimi 30 giorni)
Mostra commenti meno recenti
Hi all,
My matlab script is almost entirely a big loop that searches through small patches of an image and computes sum-of-square-differences with a "target patch", like this:
for i = 1:num_pixels_in_image
patch = image(i-5:i+5,j-5:j+5);
ssd(i) = sum(patch(:) - target(:)).^2;
end
Naturally, this process is very slow when the number of pixels grows large. I'm wondering what the absolutely most efficient way to implement this is. Problems such as this, it seems, don't lend themselves easily to vectorization. Cheers!
0 Commenti
Risposte (1)
Image Analyst
il 28 Gen 2016
Not sure why you're doing that but I'm not sure you should do it that way. I think you maybe should use normalized cross correlation instead. There is a function that does that called normxcorr2(). I attach a demo. Basically it will give a high signal when the image patch is like the target patch and a low signal when the target patch is not like the image patch. Why do you want to do it the way you said? What is the overall goal of that algorithm? To determine where in the image is like the patch? That's what normxcorr2() is for.
4 Commenti
Vedere anche
Prodotti
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!