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I need to Binarize an image in matlab with a static threshold of 10% of mean intensity. I find mean intensity using mean2(Image) and this returns a mean let say 15.10 in one of the image. Thus my mean threshold is 1.51.im2bw(image,level) takes threshold between 0 to 1. How to binarize my image in this case in matlab?

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4 Answers 4

up vote 3 down vote accepted

You can binarize the image with a simple logical statement. For completeness, I've added the threshold determination as well.

threshold = mean(Image(:));

binaryMask = Image > 0.1 * threshold;
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I don't think I am getting a binary image. It's lot of colored pixels.Binary should have been B/W right? and btw shouldn't the mean() be mean2() ? –  MaxSteel Mar 26 '13 at 20:24
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@Panther: You may first need to convert your image from RGB to grayscale (if size(Image) shows a size of 3 in the third dimension) using rgb2gray. Also mean2(x) is a shortcut for mean(x(:)), see the "algorithm" section in the help. –  Jonas Mar 26 '13 at 20:27

You need to normalize the result of the mean vs the max intensity of the image if you want to use im2bw (the other solutions mentioned are of course correct and work):

ImageN=Image./max(Image(:))
t = mean2(ImageN) * 0.1 % Find your threshold value 
im2bw(Image,t)
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1) you can first convert the original image to double format using im2double(). Then all the pixels values will be between 0 and 1. Then you can use im2bw(im,level).

2) If you do not want to convert the image to double, then you can do it in this way. Let's say the threshold is 10 % of the the mean value, say threshold = 1.51. Let's denote the image you have is im. Then im(im<threshold) = 0; im(im>=threshold)=1. After these two operations, im will become a binary image.

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I did this: mu=mean2(idiff); threshold=0.1*mu; idiff(idiff>=threshold)=1; idiff(idiff<threshold)=0; imagesc(idiff); I get a black image. Am i doing anything wrong? –  MaxSteel Mar 26 '13 at 20:18
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change the sequence of 'idiff(idiff>=threshold)=1;' and 'idiff(idiff<threshold)=0;' and then show it by using this command 'imshow(im, [])'. If you use 'imshow(im)', you may have a black figure. –  tqjustc Mar 26 '13 at 21:07

Let's say your image is a matrix img, you can do the following:

t = mean2(img) * 0.1 % Find your threshold value
img(img < t) = 0 % Set everything below the treshold value to 0
img(img ̃= 0) = 1 % Set the rest to 1
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