Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm interested in learning about, and writing a system that will extract features from audio files (mp3, wav, etc) which can later be used for whatever purpose. In the future I hope to use it to write some software for music similarity.

Are there any libraries that exist to help? I know of libxtract, but haven't used it.

Also, are there any low level c/c++ libraries that would be good with dealing with audio streams? I simply have no experience in this area.

Thanks for the help,


share|improve this question
What do you consider "features"? –  RedFilter Sep 22 '09 at 18:56
When I say "features", I'm referring to a more AI theoretical definition. A feature is any metric that can be used to distinguish or group the audio together. For example, the average or the variance and other statistical things can be features. –  esiegel Sep 22 '09 at 19:00

5 Answers 5

up vote 11 down vote accepted

Marsyas is a very complete framework which also offers audio feature extraction.
It is written in C++ and offers a "patching" mechanism that allows you to plug together predefined components.
The framework comes with several examples.
Take a look at the sources to learn how to create custom extractors.
The bextract command line tool that comes with Marsyas can extract:

  • MFCCs
  • Zero Crossing Rate
  • Spectral Centroid
  • ...

Marsyas supports several platforms including Windows, Linux and Mac OS X (I also saw an article mentioning that it also works on the iPhone)

share|improve this answer

There is also libxtract, which provides a comprehensive set of over 50 audio features designed for real-time use. It's a 'lean' library with minimal dependencies, and provides bindings for Python and Java. There is also an 'external object', which makes libxtract functionality available in the Pure Data real time computer music environment.

The canonical reference for libxtract is this paper.

share|improve this answer

A couple of more options:

Yaafe is probably the most highly optimized in terms of performance (see the benchmarks below). It gets a big speedup by sharing intermediate computation between feature extractors. For example, it will only run one FFT per window and then any extractor that requires an FFT will just reference that FFT. The other extractors mentioned don't really do that because they rely on a plugin architecture - i.e. each extractor needs to be standalone.

However, Sonic Annotator and friends benefit from a plugin architecture so you can enjoy all sorts of 3rd party feature extractors (including libxtract). The Vamp plugin ecosystem is really quite varied and wonderful. There's complete example code in the Vamp Plugin SDK for building a plugin host.

Here's a benchmark (in seconds) comparing Sonic Annotator, Marsyas and YAAFE doing feature extraction on 40 hours of 32 KHz mono wav files:

            S.A.    Marsyas     YAAFE
MFCC        1506       1168       142
Centroid    724         942       235
Rolloff     731         951       194
ZCR         221         620        57
Total       3182       3681       628
share|improve this answer

First, read about the FFT and digital signal processing. Next, get a textbook on speech recognition, since that's based on exactly what you want to do - a speech recognition engine extracts "features" from audio in order to determine what's being spoken.

I've found that Cepstral Coefficients make great "features" in the machine learning sense.

share|improve this answer

Check out the website http://www.audiocontentanalysis.org/. Under the section "software" you'll find a list with different libraries related to Audio Signal Processing, Feature Extraction and Music Information Retrieval. Furthermore the website (and its book) seems like a very good starting point to dive into the whole topic.

share|improve this answer

Your Answer


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.