# histogram equalization for each regions in an image

i need some help here.. how to create this application using matlab.. image enhancement using adaptive contrast enhancement.. this is the proposed method that i will follow..

The proposed method presented here uses HE in a controlled and localized manner to stretch the details in dark images while improving overall contrast in brighter ones. It is referred to as Adaptive Contrast Enhancement (ACE) because of the locally adaptive effect that is produced in each frame. The proposed algorithm begins by dividing the histogram of the luminance levels into three regions – dark, mid and bright. These regions were of equal size. Each of these three regions is then processed independently using HE.

I still dont get the solution to use histogram equalization for each region.. I juz got the codes for normal histogram equalization...this is my codes..

``````K = handles.GRAY;

numofpixels=size(K,1)*size(K,2);

L=uint8(zeros(size(K,1),size(K,2)));
freq=zeros(256,1);
probf=zeros(256,1);
probc=zeros(256,1);
cum=zeros(256,1);
output=zeros(256,1);

%freq counts the occurrence of each pixel value.

%The probability of each occurrence is calculated by probf.

for i=1:size(K,1)
for j=1:size(K,2)
value=K(i,j);
freq(value+1)=freq(value+1)+1;
probf(value+1)=freq(value+1)/numofpixels;
end
end

sum=0;
no_bins=255;

%The cumulative distribution probability is calculated.

for i=1:size(probf)
sum=sum+freq(i);
cum(i)=sum;
probc(i)=cum(i)/numofpixels;
output(i)=round(probc(i)*no_bins);
end

for i=1:size(K,1)
for j=1:size(K,2)
L(i,j)=output(K(i,j)+1);
end
end

axes(handles.axes3);
imshow(L);

axes(handles.axes4);
imhist(L);
``````
-
If you are open to other options, use the MATLAB function `adapthisteq`. It implements CLAHE. –  sgarizvi Jan 20 '13 at 19:10
thank you.. ^^ i thought the same too to use that function.. but i think that is my last option to use it.. anyway, thanks... –  Sumi Jan 21 '13 at 16:13