Sir how can we compress image using FFT transform..RLE coding is not suitable with the FFT..what coding technique is suitable for FFT to compress the image..

답변 (2개)

Walter Roberson
Walter Roberson 2014년 4월 3일

0 개 추천

RLE is a lossless compression technique. Compression with FFT is a lossy compression technique. You do the FFT, and you throw away some of the coefficients and output the rest; then for reconstruction you let the missing coefficients be 0 and do the inverse FFT.
Which coefficients you should throw away is something for you to explore.
sam k
sam k 2020년 6월 6일

0 개 추천

a=imread('link.jpeg');
grayIm =rgb2gray(a);
[row col] = size(grayIm);
subplot(2, 2, 1);
imshow(grayIm);
title('original image')
A=fft2(grayIm); %2D fft
count_pic=2;
for thresh=0.1*[0.001 0.005 0.006]*max(max(abs(A)))
ind=abs(A)>thresh;
count=row*col-sum(sum(ind));
Alow=A.*ind;
per=100-count/(row*col)*100;
Blow=uint8(ifft2(Alow));
subplot(2,2,count_pic);
imshow(Blow);
count_pic=count_pic+1;
title([num2str(per) '% of fft basis'])
end

댓글 수: 2

Thinh
Thinh 2022년 10월 26일
can you explain this, please
This means what % of the highest FFT coeffcients to keep.
It can be also applied for color (RGB) images as well:
A = imread('A1.jpeg');
Afft=fft2(A);
Asort = sort(abs(Afft(:)));
counter=0;
for Keep = [.95 .1 .05 .001]
threshold = Asort(floor((1-Keep)*length(Asort)));
Ind = abs(Afft)>threshold;
Atlow = Afft.*Ind;
Alow = uint8(ifft2(Atlow));
s = whos('Alow');
totSize = s.bytes;
counter=counter+1;
figure(counter)
imshow(Alow)
saveas(gcf, strcat(['FFT_IMG', num2str(counter) '.jpeg']))
s = dir(strcat(['FFT_IMG', num2str(counter) '.jpeg']));
filesize(counter)=s.bytes
title([num2str(Keep) '% of fft basis is kept and updated image file size is: ' num2str(s.bytes)])
end

댓글을 달려면 로그인하십시오.

카테고리

도움말 센터File Exchange에서 Denoising and Compression에 대해 자세히 알아보기

질문:

2014년 4월 3일

댓글:

2023년 11월 15일

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by