# 3x3 Average filter in matlab

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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## 4 Answers

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
the upper limit on sum is 255, so you need to set it to double beforehand – Rasman Nov 18 '12 at 22:56
my bad, you need to cast noisy_img to double. uint8 seems to override doule – Rasman Nov 18 '12 at 23:02
@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
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
``````img=imread('camraman.tif');
nsy-img=imnoise(img,'salt&pepper',0.2);
imshow('nsy-img');
h=ones(3,3)/9;
avg=conv2(img,h,'same');
imshow(Unit8(avg));
``````
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Welcome to Stack Overflow! While this code snippet may solve the question, including an explanation really helps to improve the quality of your post. Remember that you are answering the question for readers in the future, and those people might not know the reasons for your code suggestion. – Lynn Crumbling Sep 15 '15 at 2:33
``````img = imread('img.bmp');
filtered = imfilter(double(img), ones(3) / 9, 'replicate');
imshow(uint8(filtered));
``````
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another option:

`````` f = @(x) mean(x(:));
filtered_img = nlfilter(noisy_img,[3 3],f);
``````
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