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I have a an image of size 180x220 containing some noise in the region for example (145:180,1:65).

My question is how to remove the noise in this region without affecting the other parts of the image using Matlab.

Thank you very much.

Edit: I want to remove the noise in the regions (1:146,1:25) and (1:15,25,174) from the following image:

enter image description here

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2  
very hard to answer without knowing what type of noise and without seeing an image. –  carlosdc Dec 4 '12 at 10:29
    
thank you, I added an image and specified the exact region from which I want to remove the noise. –  Gamba Osaca Dec 4 '12 at 10:44
    
@GambaOsaca: hmmm that doesn't really look like noise, more like the output of some sharpening filter or some such...are you at liberty to say what this is an image of? –  Rody Oldenhuis Dec 4 '12 at 10:46
    
It's a depth map. acquired by a depth sensor. –  Gamba Osaca Dec 4 '12 at 10:49
    
the noise correspond to a region that's outside the maximum range of the sensor (5 meters). –  Gamba Osaca Dec 4 '12 at 10:51

2 Answers 2

up vote 2 down vote accepted

In general, this would go something like

% filter image in-place
img(145:180, 1:65) = medfilt2(img(145:180, 1:65));

Note that most filters require some context of the region of interest to do a proper interpolation/averaging/etc., so you might want to take this approach:

% Note: increase ROI by 10 on each side
offset = 10;
img_tmp = img(145-offset : 180+offset, 1 : 65+offset); 

% apply filter
img_tmp = medfilt2(img_tmp, [additional parameters]);

% put filtered image back in its proper place
img(145:180, 1:65) = img_tmp(offset:end-offset+1, 1:end-offset+1); 
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thank you Rody, my image is a depth map, it contains only one layer. I attached an example image. –  Gamba Osaca Dec 4 '12 at 10:47
    
@GambaOsaca: Well in that case, see my last edit :) –  Rody Oldenhuis Dec 4 '12 at 10:52
    
Thank you Rody, it's working –  Gamba Osaca Dec 4 '12 at 11:05
img = double(imread('img.jpg'));
h = fspecial('gaussian', hsize, sigma); % decide how to filter the image
img_filt = imfilter(img, h, 'replicate');

now, use the filtered image only in the noise region

img(145:180,1:65,:) = img_filt(145:180,1:65,:); 

Edit: After you posted the image I guess you want simply replace the noised region by the vanilla color? If so, then do the following (assuming gray image):

med_pixel = median(img(:)); % detect the dominant color
img(1:146,1:25) = med_pixel;
img(1:15,25,174) = med_pixel;

... and so on

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+1, although img(145:180,1:65,:) = imfilter(img(145:180,1:65,:), h, 'replicate'); would be far less demanding on resources. –  Rody Oldenhuis Dec 4 '12 at 10:38
    
@RodyOldenhuis, I agree. But this can allow to use very large (LF) filter to clean the noise using the actual image. I guess it depends on the speed/quality requirements. –  Serg Dec 4 '12 at 10:42
    
true, it depends on the type and size of filter, and therefore the surroundings of the ROI. –  Rody Oldenhuis Dec 4 '12 at 10:47

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