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Stretch the dynamic range of the given 8-bit grayscale image using MATL...

How to Show modified image in MATLAB.

 Hi,

 
I am looking for a method which help me to showing modified patches of image in matlab into the original image. I select random patches from an image half of patches i brighten and half of patches i darken and when i write "imshow(A)" it show me the original image not the modified one. I have required a method which show me the modified patches pasted into their original image.
 
Here is my Coding!
 

>

clc;
A=imread('C:\Users\hp\Desktop\matlab\pictures\lenna.png');%sample image
rnd_x = randperm(size(A,1)-128,7);%choose 7 random unique points on x-axis
rnd_y = randperm(size(A,2)-128,7);%choose 7 random unique points on y-axis
image(A)
for ii = 1:4
    for jj = 5:7
        piece{jj} = A((rnd_x(jj):(rnd_x(jj)+127)),(rnd_y(jj):(rnd_y(jj)+127)),1:3)+100;
        figure(jj)
        a=imadjust(jj);        
        imshow(piece{jj});
                
    end
    piece{ii} = A((rnd_x(ii):(rnd_x(ii)+127)),(rnd_y(ii):(rnd_y(ii)+127)),1:3)-100;%Convert chosen numbers to image pieces
    figure(ii)
    b=imadjust(ii);    
    imshow(piece{ii});
    
    
end
imshow(A)

 

ANSWER


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I understand that you want to take 7 patches of size 127X127 from the original image and make 3 of them lighter by adding 100 to there pixel values and 4 of them darker by subtracting 100 from there pixel values. You are not able to see any change in the image ‘A’ as you didn’t make any changes on it, rather stored the changed pixel values in ‘piece’. You can try this modified code.

 

clc;
A=imread('C:\Users\hp\Desktop\matlab\pictures\lenna.png');%sample image
rnd_x = randperm(size(A,1)-128,7);%choose 7 random unique points on x-axis
rnd_y = randperm(size(A,2)-128,7);%choose 7 random unique points on y-axis
image(A)
for ii = 1:4
    for jj = 5:7
        piece{jj} = A((rnd_x(jj):(rnd_x(jj)+127)),(rnd_y(jj):(rnd_y(jj)+127)),1:3)+100;
        A((rnd_x(jj):(rnd_x(jj)+127)),(rnd_y(jj):(rnd_y(jj)+127)),1:3)= piece{jj}; % add the changed pixel values to the original image A
        figure(jj)
        a=imadjust(jj);        
        imshow(piece{jj});
  SEE COMPLETE ANSWER CLICK THE LINK


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