Non-square FFT
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Hello,
I wonder if one can perform a non-square DFT efficiently. Specifically, let's say I've got a grid function with N = 2 * K points, and I want to find the lower half (by frequency magnitude) of its DFT only. An obvious way would be to perform an FFT of the input grid function and then throw away the K higher frequency components. I wonder if there is a faster way to obtain the same result.
Thanks,
Dmitry
댓글 수: 2
Walter Roberson
2021년 5월 11일
y = nufft(x,t,f) maybe ?? I have no idea what the performace is of nufft()
Dmitry Medvedev
2021년 5월 12일
답변 (1개)
There's probably no significant efficiency to be gained if you just want to get rid of half of the frequencies, as in the example you've mentioned. For a highly sparse FFT, for example if you want just want to keep the first 3 out of 1000 frequencies, it makes sense to pre-compute a non-square DFT matrix,
n=1000;
M=exp(-1j *(2*pi/n)* (0:n-1).*(0:2).'); % 3xn DFT matrix
and multiply it with your signal.
댓글 수: 7
Dmitry Medvedev
2021년 5월 12일
Here's a timing comparison. Basically, you need to be discarding the vast majority of the frequencies before FFT-and-discard becomes sub-optimal.
n=1e6;
x=rand(1,n);
t=0:numel(x)-1;
f=0:80;
M=exp(-1j *(2*pi/n)* (0:n-1).*f.'); % 3xn DFT matrix
tic; y=fft(x);y=y(f+1); toc %Use FFT and discard
tic; M*x(:);toc %Use pre-computed matrix
tic; nufft(x,t,f); toc %Use NUFFT
Dmitry Medvedev
2021년 5월 12일
Matt J
2021년 5월 12일
Yes, the first 81.
Walter Roberson
2021년 5월 12일
This does not surprise me. fft() calls into high performance libraries that are coded in C or Fortran
Another option is to use the Chirp-Z Transform to compute a partial FFT, though for simple cases FFT + throw away is still probably more efficient.
However, if you have a simple division like wanting only the first half of the frequency vector, you could always apply the same recursion rules that the FFT itself does and just do two smaller FFTs, summing the result.
For instance, for a length-100 signal, if you only want the first 50 coefficients of the FFT you could do
x = randn(100,1);
% FFT + throw away.
y1 = fft(x);
y1 = y1(1:50);
% Manually compute two FFTs.
y2 = fft(x(1:2:end)) + exp(-1j*2*pi/100*(0:49)') .* fft(x(2:2:end));
norm(y1-y2)
Dmitry Medvedev
2021년 6월 11일
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