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# Apply new equalized histogram on the image matrix in matlab

Suppose that based on my my previous question I have equalized the histogram of an image now the question is how to apply this new equalized histogram on the image?
I mean what is the algorithm to get the new image from the new equalized histogram?
It is evident that the last for loops, shown in this photo, are for applying the equalized histogram on the image matrix.

But I don't understand the algorithm used.
Again note that it's a college assignment and I'm not permitted to use built-in functions available in the image processing toolbox.

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Well I found the algorithm for applying the new equalized histogram on the image matrix here.
The specific part of this web page that helped me is shown in this picture:

And the codes that I wrote for implementing this algorithm are in this link.
Note that lines 22 to 24 in the file "HistogramEqualization" implement the algorithm above for a gray scale image. And the code for an RGB one is the same except that it should be repeated for each color channel.

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1. Create the histogram for the image.
2. Calculate the cumulative distribution function histogram.
3. Calculate the new values through the general histogram equalization formula.
4. Assign new values for each gray value in the image.

``````clc
close all
clear all
%% HISTOGRAM EQULAIZER
%%
zz=rgb2gray(I1);
figure,subplot(1,2,1),imshow(zz), title('original image')
subplot(1,2,2),imhist(zz),title('original image histogram')

%% Calculating the CDF
hst=imhist(zz);
j=1;
cdff(1,1)=hst(1,1);
for i=2:256
cdff(i)=hst(i)+cdff(i-j);
end
cdff1=cdff';
cdf_min=min(cdff);
[row col]=size(zz);
mn=row*col;
figure, plot(cdff), title('CDF of Image')
%% calcuting new intensity
for indx=1:length(cdff)
h(indx)=round((cdff(indx)-cdf_min)/(mn-cdf_min)*255);

end
h1=h';
figure,plot(h1), title('New value for General Histogram')

%% EQULIZED IMAGE

HIm=uint8(zeros(size(zz,1),size(zz,2)));

for i=1:row;
for j=1:col;
HIm(i,j) = h((zz(i,j)+1));
end
end

figure,subplot(1,2,1),imshow(HIm), title('Equlized Image')
subplot(1,2,2),imhist(HIm) ,title('Equlized image histogram')
``````
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