I have a greyscale 200x200 image and I would like to compute the histogram of the intensity for each 8x8 window in the image. How can I compute that fast? I use for loops n开发者_如何学JAVAow but it is so slow. My current code looks like:
I = imread('image.jpg');
for i=1:8:height-7
for j=1:8:width-7
patch = I(i:i+7,j:j+7);
% compute histogram for the patch
end
end
If you have the Image Processing Toolbox you can use the function blockproc
which is a compiled and general version of your loop. Just define the callback function to be your histogram calculation.
B = blockproc(I, [8 8], @myhistfun)
I think below code may answer your question. The trick is not to call any functions inside a loop and have all arrays preallocated. See e.g. http://www.quantiphile.com/2010/10/16/optimizing-matlab-code/ for more on loop acceleration. Anyways, on my machine below accelerated loop is 17 times faster.
% image size
height = 800;
width = 1200;
window = 8;
% histogram bin centers
bin_centers = 0.05:0.1:1;
% here a random image as input
img = rand(height, width);
% verion using accelerated loops (for this to work there cannot be any
% function calls to not built-in functions)
tic
img3 = zeros(window^2, height*width/window^2);
ind = 1;
for i=1:window:height
for j=1:window:width
patch_ = img(i:i+window-1,j:j+window-1);
img3(:,ind) = patch_(:);
ind = ind + 1;
end
end
hist_img3 = hist(img3, bin_centers);
toc
% probably version of user499372 calling hist function within the loop
tic
hist_img4 = zeros(size(hist_img3));
ind = 1;
for i=1:window:height
for j=1:window:width
patch_ = img(i:i+window-1,j:j+window-1);
hist_img4(:,ind) = hist(patch_(:), bin_centers);
ind = ind + 1;
% compute histogram for the patch
end
end
toc
% test the results
all(all(hist_img3==hist_img4))
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