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I'm not entirely sure this is the correct stack exchange subsite to post this question to, but...

I'm looking for an algorithm that I can use to determine with a decent amount of certainty if a given piece of audio is music or not. Just a boolean result is fine, I don't need to know the key, bpm or anything like that, I just need to be able to determine if it appears to be music (as opposed to speech). Programming language is irrelevant, but I'll end up converting it to Python.

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even humans will disagree on whether a given sound is music or not :-/ – Mat Apr 3 '11 at 19:38
This is a very hard problem. – Oliver Charlesworth Apr 3 '11 at 19:38
If the only other option is speech, you might get away with a simple frequency check, as a lot of it will usually be outside the spectrum of a human voice. – Wrikken Apr 3 '11 at 19:45
I would ask at cstheory.stackexchange.com and IF YOU'RE LUCKY you might find some grad student there who is working on something that can do this. I know it seems like what you're asking for is simple; but you're really asking for a lot. People can get their PhDs off of providing what you just asked for. – Dave Apr 3 '11 at 19:46
If you ever solve this problem, I'd like to run it on my university's "Center for 21st-century music" to see what happens. – Thom Smith Apr 3 '11 at 19:47

In a phrase, Fourier analysis. Look at the power of different frequencies over time. Here's speech, and here's violin playing. The former shows dramatic changes with every syllable; the 'flow' is very disjoint and could be picked up by an algorithm which took the derivative of the different frequency bands as a function of time. In paradigmatic music, on the other hand, the transitions are much smoother and the tones are purer (less 'blur' in the graph). See also the 'spectrogram' wikipedia page.

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What you could do is set up a few Karplus Strong resonance rings and through the audio through them, and just monitor the level of energy in each ring

if it is Western music, it is pretty much all tuned to 12-TET, ie logarithmic 12 tone scale based around concert pitch A4@440Hz

so just pick 3 or 4 notes equally spaced through the octave eg C5, (omit C# D D#) E5 (omit F F# G) G#5 (omit A A# B)

and at least one of those rings will be flaring regularly -- whichever key the music is in, it's probably going to hit one of those notes quite a lot

ideally do it for a bunch of notes, but if you need this real-time it can get a bit heavy feeding your audio simultaneously into 50 rings

alternatively you could even use a pitch detector and catalogue recorded pitches, and look at ratios of log(noteAfreq):log(noteBfreq) see whether they are arranging themselves into low order fractions like 3:4 += 0.5%. but I don't think anyone has built a decent polyphonic pitch detector -- it is practically impossible.

Melodyne might have pulled it off

If it's just a vocal signal you can e-mail me.

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Look for a small "First differential" over a sequence of FFTs that are in the range of music tones (ie: 1024 samples per chunk run through FFT, then plot chunk1-chunk0,chunk2-chunk1,...). As a first approximation, this should be enough to detect simple things.

This is the sort of algorithm that could be tweaked forever, even in genre-specific ways. Music itself is generally periodic as well, so coming up with a way to run FFTs over the FFTs. And the idea to look for a consistent twelfth root of two spread of outstanding frequencies sounds really plausible.

I bet you were hoping to find this sitting in an free Python library for you to simply drop a file into. :-)

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