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I've written code to smooth an image using a 3x3 averaging filter, however the output is strange, it is almost all black. Here's my code.

function [filtered_img] = average_filter(noisy_img)
    [m,n] = size(noisy_img);
    filtered_img = zeros(m,n);
    for i = 1:m-2
        for j = 1:n-2
            sum = 0;
            for k = i:i+2
                for l = j:j+2
                    sum = sum+noisy_img(k,l);
                end
            end
            filtered_img(i+1,j+1) = sum/9.0;
        end
    end
end

I call the function as follows:

img=imread('img.bmp');
filtered = average_filter(img);
imshow(uint8(filtered));

I can't see anything wrong in the code logic so far, I'd appreciate it if someone can spot the problem.

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3 Answers 3

up vote 5 down vote accepted

Assuming you're working with grayscal images, you should replace the inner two for loops with :

filtered_img(i+1,j+1) = mean2(noisy_img(i:i+2,j:j+2));

Does it change anything?

EDIT: don't forget to reconvert it to uint8!!

filtered_img = uint8(filtered_img);

Edit 2: the reason why it's not working in your code is because sum is saturating at 255, the upper limit of uint8. mean seems to prevent that from happening

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It did work in fact, but I don't understand why. What was wrong with my code?. –  turingcomplete Nov 18 '12 at 22:49
1  
the upper limit on sum is 255, so you need to set it to double beforehand –  Rasman Nov 18 '12 at 22:56
1  
my bad, you need to cast noisy_img to double. uint8 seems to override doule –  Rasman Nov 18 '12 at 23:02
1  
@turingcomplete great, but know that Matlab users should avoid for loops if possible/legible as it tends to be less efficient. –  Rasman Nov 18 '12 at 23:24
1  
You can also use mean2() instead of mean(mean()). Just so you know, std2 also exists and works similarly. –  Bill Nov 19 '12 at 15:39

another option:

 f = @(x) mean(x(:));
 filtered_img = nlfilter(noisy_img,[3 3],f);
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img = imread('img.bmp');
filtered = imfilter(double(img), ones(3) / 9, 'replicate');
imshow(uint8(filtered));
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