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I have a color image. I need to apply Histogram equalization in that.

If I use it on the following code

im = imread('E:\S1\New\Image1.png');
Test = histeq(im);

I get the following error

Function HISTEQ expected its first input, I, to be two-dimensional.

Error in ==> histeq at 71
iptcheckinput(a,{'uint8','uint16','double','int16','single'}, ...

How to solve this ?

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3 Answers 3

up vote 3 down vote accepted

I think the most common solution is to convert the image to an HSV colour space and then apply histeq only to the V (i.e. value or intensity) channel.


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interesting.... –  Shai Apr 23 '13 at 6:25

The thing is histogram is only well defined for gray-scale images. How would you define histogram equlization for colors?
Hist-eq tries to re-distribute the gray values to span (as evenly as possible) the entire range of 0..255 by slightly changing the brightness of pixels.
If you wish to do the same for colors: that is to fill evenly the entire RGB cube you'll find yourself changing the colors of pixels. That is, you'll end up with yellow pixels turning brown.

You'll have to clearly define what you are after.

If you only want to span the entire range of intensities (without affecting the colors), you'll find Dan's solution very useful.

If you do want to "fill" the entire RGB cube, you might want to consider applying hiseq to each channel of the image independently:

for ci = 1:size(im,3)
    Test(:,:,ci) = histeq( im(:,:,ci) );
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For simple way, try this :

im = imread('E:\S1\New\Image1.png');
Test =im(:,:,1); ir=histeq(ir); figure; imshow(ir, 'Border', 'tight');
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