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I'm working on an application that samples audio and needs to do real time processing (FFT and harmonic product spectrum) of this data.

I need to use a sampling rate of 44100Hz and need a frequency resolution of 0.5Hz, meaning I need 88200 samples pre-FFT. This takes about 2 seconds to capture since it's twice the sampling rate; however, after the first sample, I do improve things significantly by using a circular buffer for the sampling and read only half as many samples from then on.

Unfortunately, the performance is still quite low and there is quite a bit of latency. This is a big problem since the application needs to be responding in a timely manner to input as it happens.

Does anyone have any suggestions for how I might improve the performance of this? I think the main problem lies in the requirement for large samples and it would be good if there was some way I could reduce how much audio is read while still maintaining the same accuracy. Would threading perhaps help here?


If it helps to know, I am trying to do real-time F0 estimation from electric guitar input, along with multiple F0 estimation for chord matching. I have methods of doing this that work and are quite accurate, but it's for a uni project and I don't really have enough time left to look too far into other methods than the FFT. Really, I'm just hoping for some kind of way to speed up the sampling process.

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Is it possible to improve the concurrency level? For e.g. split the file into smaller chunks (for a start 2 chunks) and run the sample them under different threads? If you don't have a dependency on hardware (CPU driven and not sound card driven) I think this divide and conquer approach may help. – questzen Mar 27 '12 at 12:36
up vote 1 down vote accepted

Since you need to capture 2s of audio initially, this will set a lower bound on latency. Even with your 50% overlap you will still have a minimum latency of 1s. The FFT and other processing will only add to this, but hopefully not by a significant amount (otherwise use a faster FFT library). The only way you will be able to reduce this latency is by sacrificing frequency resolution.

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This is what I feared. I think some people have tried using some kind of interpolation of zeroes with the FFT input to increase the resolution but still using fewer samples. I might try that and see how it works, but I think that alone will not be a solution. – nihilo90 Mar 27 '12 at 14:01
Padding with zeroes doesn't give you any more accuracy, it just interpolates your frequency domain data so that you get more apparent resolution, but this is really just cosmetic - it won't separate peaks that are too close together to resolve based on your sampling rate, i.e. you can't get information from nowhere. It would probably help if you gave a high level idea of what you are trying to do, as there may be other approaches. – Paul R Mar 27 '12 at 14:17
I've edited the question with more info on my project. And as far as zero padding goes, does it make a difference if I'm only interested in a certain frequency range? Also, would averaging the surrounding bins for these interpolated points be something to consider? – nihilo90 Mar 27 '12 at 15:20
OK - I thought it might be yet another pitch estimation question. ;-) You might want to look at some of the other questions and answers on SO on this subject, as it's been quite extensively covered over the last couple of years - there seem to be an awful lot of people writing guitar tuners and similar apps for iOS etc. An FFT-based approach is probably not ideal, but if you are time-limited then you may just have to make the best of it. – Paul R Mar 27 '12 at 15:23
I was aware that there were other options but, honestly, the FFT approach was the only one I could really understand. I have found that the explanations for these things online are not so great (at least not for someone without an advanced mathematics background). Thanks for your help though :) – nihilo90 Mar 27 '12 at 15:33

Using an FFT method gives you a time-frequency trade-off. If you want lower latency, you will have to use less data, which with an FFT (either shorter or zero-padded) will give you a less accurate frequency estimate.

Zero-padding will just give you a high-quality interpolation. But this may provide a better peak frequency estimate than just using the center of the peak bin of a shorter FFT.

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