Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I want to use a GPU-accelerated algorithm, to perform a fast and memory saving dft. But, when I perform the gpu::dft, the destination matrix is scaled as it is explained in the documentation. How I can avoid this problem with the scaling of the width to dft_size.width / 2 + 1? Also, why is it scaled like this? My Code for the DFT is this:

cv::gpu::GpuMat d_in, d_out;
d_in = in;
d_out.create(d_in.size(), CV_32FC2 );
cv::gpu::dft( d_in, d_out, d_in.Size );

where in is a CV_32FC1 matrix, which is 512x512.

The best solution would be a destination matrix which has the size d_in.size and the type CV_32FC2.

share|improve this question

2 Answers 2

up vote 4 down vote accepted

This is due to complex conjugate symmetry that is present in the output of an FFT. Intel IPP has a good description of this packing (the same packing is used by OpenCV). The OpenCV dft function also describes this packing.

So, from the gpu::dft documentation we have:

If the source matrix is complex and the output is not specified as real, the destination matrix is complex and has the dft_size size and CV_32FC2 type.

So, make sure you pass a complex matrix to the gpu::dft function if you don't want it to be packed. You will need to set the second channel to all zeros:

Mat realData;

// ... get your real data...

Mat cplxData = Mat::zeros(realData.size(), realData.type());

vector<Mat> channels;
channels.push_back(realData);
channels.push_back(cplxData);

Mat fftInput;
merge(channels, fftInput);

GpuMat fftGpu(fftInput.size(), fftInput.type());
fftGpu.upload(fftInput);

// do the gpu::dft here...

There is a caveat though...you get about a 30-40% performance boost when using CCS packed data, so you will lose some performance by using the full-complex output.

Hope that helps!

share|improve this answer
    
Thanks a lot for the explanations. This works! If I'll have very big pictures someday, I'll change to the CCS packed data format. Also thanks for the links. –  reinhar2 Dec 19 '11 at 15:27
    
No problem! Glad to help :) –  mevatron Dec 19 '11 at 16:29
    
I'd just like to add that OpenCV's gpu::dft does NOT use Intel's CCS format, unlike the non-gpu dft function. Instead it uses cuFFT's packed format. The difference is that CCS is a single channel image of the same dimensions as the real image, and cuFFT is a two-channel image at roughly half the width. –  may5694 Jul 17 '14 at 15:46

Scaling is done for obtaining the result within the range of +/- 1.0. This is the most useful form for most applications that need to deal with frequency representation of the data. For retrieving a result which is not scaled just don't enable the DFT_SCALE flag.

Edit

The width of the result is scaled, because it is symmetric. So all you have to do is append the former values in a symmetric fashion.

The spectrum is symmetric, because at half of the width the sampling theorem is fulfilled. For example a 2048 point DFT for a signal source with a samplerate of 48 kHz can only represent values up to 24 kHz and this value is represented at half of the width.

Also for reference take a look at Spectrum Analysis Using the Discrete Fourier Transform.

share|improve this answer
    
I don't mean the scaling of the values of the result of the dft. I mean the scaling of the width of the result. –  reinhar2 Dec 19 '11 at 14:47
    
Ah, now i've got it. Made an edit. –  Sebastian Dressler Dec 19 '11 at 14:55
    
yeah...there is my problem: just imagine I have got a 8x8 matrix and I would transform it. My result would be 5x8 and not 4x8. This means, there are columns, I don't have to mirror. –  reinhar2 Dec 19 '11 at 15:12
    
This has nothing to do with the input, but with the output. Take a look at the answer of @mevatron, maybe that helps. –  Sebastian Dressler Dec 19 '11 at 15:15
    
Thanks for your help, too. It was just a thingof the CCS packing I didn't know about. Also thanks for the link. –  reinhar2 Dec 19 '11 at 15:31

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.