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I want to find the histogram of two images and find the similarity using Euclidean distance. I'm trying to use the imhist command but it is giving the following error:

Error using ==> iptcheckinput
Function IMHIST expected its first input, I or X, to be two-dimensional.

my code is as follows:

% read two images
Im1 = imread('1.jpg');
Im2 = imread('2.jpg');

%  convert images to type double (range from from 0 to 1 instead of from 0 to 255)
Im1 = im2double(Im1);
Im2 = im2double(Im2);

% Calculate the Normalized Histogram of Image 1 and Image 2
hn1 = imhist(Im1)./numel(Im1);
hn2 = imhist(Im2)./numel(Im2);

% Calculate the histogram error
f = sum((hn1 - hn2).^2);
f; %display the result to console
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2 Answers 2

Indeed, histograms are meant to represent the repartition of tonal values for one single channel. Color images are often 3-channels images (Red, Green, Blue in most cases).

Ghaul's method should work quite correctly. If you want to be more precise, you can extract each channel and compute its histogram:

Red1 = Im1(:, :, 1);
Green1 = Im1(:, :, 2);
Blue1 = Im1(:, :, 3);
HnBlue1 = imhist(Blue1)./numel(Blue1);

You are now able to define an evaluation fonction based on the 3 euclidean distances (1 for each channel):

FBlue = sum((HnBlue1 - HnBlue2).^2);
FRed= sum((HnRed1 - HnRed2).^2);
...
F = Alpha*FBlue + Beta*FRed + Gamma*FGreen //as an example

You can therefore put the emphasis on one color or the other in your distance definition. That could be useful if the image you want to test has a specific color.

This is an alternative to Ghaul's method, but its equivalent would be to set Alpha, Beta and Gamma as "0.2989 * R + 0.5870 * G + 0.1140 * B", as Andrey stated.

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Good post! But rgb2gray does not treat all channels as equals. - "0.2989 * R + 0.5870 * G + 0.1140 * B" –  Andrey Feb 3 '12 at 8:59
    
Alright, edited! –  ibanez Aug 29 '12 at 9:04

I'm guessing that your images are color images, i.e. have three channels. To reduce them to one channel gray scale images do

Im1 = rgb2gray(Im1);
Im2 = rgb2gray(Im2);

hn1 = imhist(Im1)./numel(Im1);
hn2 = imhist(Im2)./numel(Im2);

etc..

Alternatively, if you want to work on all the color channels you can stretch your images into vectors before doing imhist, i.e., just do

hn1 = imhist(Im1(:))./numel(Im1);
hn2 = imhist(Im2(:))./numel(Im2);
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protected by Community Sep 28 '13 at 8:38

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