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I am working in image compression using Singular value Decomposition technique. I wrote code for it in Matlab. I compressed a image(255*255*3) of file size 8.15KB. When I save the compressed image(in jpg format) its file size exceeding the original image file size.

B=imread('lena.jpg');

figure,
imshow(B), title( sprintf('size=%d',numel(B)) )  // displaying the original image


A=im2double(B);

A1=A(:,:,1);

A2=A(:,:,2);

A3=A(:,:,3);

tic;


// applying svd for each layer

[U1,S1,V1]=svd(A1);

[U2,S2,V2]=svd(A2);

[U3,S3,V3]=svd(A3);

// reconstuctin compressed image


p=100;

U1p=U1(:,1:p);

V1p=V1(:,1:p);

S1p=diag(S1(1:p,1:p));

C1=U1p * diag(S1p) * V1p';

C1=255*C1;

C1=uint8(C1);

U2p=U2(:,1:p);

V2p=V2(:,1:p);

S2p=diag(S2(1:p,1:p));

C2=U2p * diag(S2p) * V2p';

C2=255*C2;

C2=uint8(C2);

U3p=U3(:,1:p);

V3p=V3(:,1:p);

S3p=diag(S3(1:p,1:p));

C3=U3p * diag(S3p) * V3p';

C3=255*C3;

C3=uint8(C3);

Q(:,:,1)=C1;

Q(:,:,2)=C2;

Q(:,:,3)=C3;


// finding size and error of the compressed image

sz = (3*(numel(U1p) + numel(V1p) + numel(S1p)));  

err = mean( abs(B(:)-Q(:)) );

toc;
t=toc;

// displying the compressed image

figure,
imshow(Q)

title( sprintf('p=%d, size=%d,err=%d', p, sz,err) );

please help me how to save the compressed file.

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4  
if you're reducing file size with SVDs, save only the retained singular values and the left&right eigenvectors. Don't reconstruct the image and save, which is pointless. –  r.m. Mar 13 '13 at 5:06
    
I think i did as u suggested only in my code. –  user59489 Mar 13 '13 at 5:53
    
still there is no difference. the compressed file size exceeding the original size of the file. –  user59489 Mar 13 '13 at 8:44

1 Answer 1

up vote 1 down vote accepted

as Lorem Ipsum said, you are not saving a compressed image, you are saving the reconstructed image itself (Q is the reconstructed image). So you're file will be as big as an 8-bit .bmp file...

And even if you save only the relevant singular values and corresponding vectors, this should not be smaller than an .jpg format file. Jpeg is already heavily compressed, with better techniques than SVD...

share|improve this answer
    
fine. but i have one more doubt.That, in the code, i used the image(225*225*3 i.e.,151875 bits) to compress and i did the compression with p=100 so i got image size 135300 bits. means i compressed the image with lesser size right?. –  user59489 Mar 13 '13 at 10:40
    
no, 225*225*3 is the amount of numbers you have to save. If you save it in 24-bit BMP, then that would be 225*225*3*24, in 8-bit BMP, that would be 225*225*3*8... Now you create a matrix Q that is 225*225*3 and you save it in uint8, so that's 225*225*3*8 bits of data. If you save only the singular values and corresponding vectors also in uint8 or something, you could save (100+225*100*2)*3*8(= 135300*8) and "decompress" your image as you did to calculate Q. But if you save Q that's still 225*225*3 integers you have to save. –  reverse_engineer Mar 13 '13 at 12:10
    
thank you very much. –  user59489 Mar 13 '13 at 15:43

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