# Giving an image a black background?

Is there any way of removing a white background and turning it into black in MATLAB?

Say i have this image:

I get the following output when i apply the code suggested in the answer: Which isn't perfect

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It took me a while to realise that this was actually a fruit, and not some sort of computer-generated image of a lava planet. I think I need to turn off the Star Trek and go eat something healthy for once. –  Polynomial Feb 7 '12 at 15:29
Can't you iterate through the image pixels and change all the white pixels to black? –  Pulkit Goyal Feb 7 '12 at 15:35
@Polynomial Lol ! –  vini Feb 7 '12 at 15:44
@PulkitGoyal i think that could be done –  vini Feb 7 '12 at 15:44
Check this question and see if it helps: stackoverflow.com/questions/8041703/… –  Mark Ransom Feb 7 '12 at 18:44

The problem, as Andrey noticed, is that not all background pixels are "255 white". This probably is happening due to JPEG compression algorithm and also because there's a shadow of the fruit in the image.

To solve this problem, first get a binary mask of the fruit region by blurring the image (this is necessary to overcome the JPEG artifacts) and then threshold the image with a very high value, but a little lower than 255. Here's the solution in Matlab:

``````I = imread('http://i.stack.imgur.com/5p4jV.jpg'); % Load your image.
H = fspecial('gaussian'); % Create the filter kernel.
I = imfilter(I,H); % Blur the image.

Mask = im2bw(Ig, 0.9); % Now we are generating the binary mask.
``````

Here's the output (you can also try different threshold values in im2bw):

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Good post (+1). By the way, it doesn't have to be due to JPEG compression. If it is a natural image of fruit on white table, any digital camera nowadays does this kind of effect. –  Andrey Feb 7 '12 at 20:01
On cameras this also happens because of JPEG compression. In professional or semi-profession cameras, however, you can choose to save the photos with no compression (also knows as raw format). Then you don't get that kind of effect. –  Alceu Costa Feb 7 '12 at 20:04
Even in RAW images with custom processing to Bitmap you will get it. It is a natural property of optics and sensor limitation (Check out about MTF/PSF) - imatest.com/docs/sharpness –  Andrey Feb 7 '12 at 20:06
Not to mention the noise that will be on the white background and will cause some of the white pixels become almost white. –  Andrey Feb 7 '12 at 20:08
perfect @AlceuCosta =) –  vini Feb 8 '12 at 2:25

You fail due to the anti-aliasing effect that blurs the edges your image. These pixels that were not removed are not 255! They are a bit lower. Basically you have 2 options:

(I wrote them from the perspective of using Matlab).

1. Select the relevant part by using `imfreehand` and then create a mask by calling `createMask` from the API.
2. Finding the correct threshold level, which isn't 255. (Much harder - if possible)

Here is a Matlab code for the first:

``````function SO1
figure();
imshow(im);
f = imfreehand();
figure;imshow(im);
end
``````
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yes. if your image is save as a variable called img:

``````thr = 255;
for i=1:3
c = img(:,:,i);
img(:,:,i)=c;
end
``````

|-)

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Hey c the Edit.. –  vini Feb 7 '12 at 17:49
This algorithm does not solve the problem: the output would be the same as the second image shown in the question. –  Alceu Costa Feb 7 '12 at 19:22
Try changing the thr from 255 to somthing smaller (and the second line to: mask = sum(img,3)>=thr*3 –  Mercury Feb 8 '12 at 6:22
Or use distance from background measurement: thr =200; img = double(img); d = (255-img).^2; d = sqrt(sum(d,3)); d(d>thr)=thr; d = d/thr; newImg = img.* repmat(d,[1 1 3]); image(uint8(newImg)); –  Mercury Feb 8 '12 at 6:38