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I've got a series of MIDI notes stored in array in the form of MIDI note number. Is there an algorithm that would get me the key and scale of the song represented by these notes?

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There are a few methods to doing this. Is your series of notes just one note at a time? Or, do you have chords? –  Brad Feb 6 '13 at 17:03
    
I doubt it's possible. Just for example, every major scale has a "relative minor" scale, meaning exactly the same sequence of notes can be viewed as either of two entirely different scales (e.g., C major is also A minor). –  Jerry Coffin Feb 6 '13 at 17:03
    
@Brad: They are a series of notes just one note at a time. I don't have any chords. –  Amr Hesham Feb 6 '13 at 17:09
    
@JerryCoffin: If you get the key of the song first, then we would be able to detect if it's a CM or an Am. –  Amr Hesham Feb 6 '13 at 17:10
    
@JerryCoffin, There are several algorithms for doing this, with decent confidence. They often work the same way humans do... contextual clues. –  Brad Feb 6 '13 at 18:31

3 Answers 3

up vote 4 down vote accepted

If you're using Python you can use the music21 toolkit to do this:

import music21
score = music21.converter.parse('filename.mid')
key = score.analyze('key')
print key.tonic.name, key.mode

if you care about specific algorithms for key finding, you can use them instead of the generic "key":

key1 = score.analyze('Krumhansl')
key2 = score.analyze('AardenEssen')

etc. Any of these methods will work for chords also. (Disclaimer: music21 is my project, so of course I have a vested interest in promoting it; but you can look at the music21.analysis.discrete module to take ideas from there for other projects/languages. If you have a MIDI parser, the Krumhansl algorithm is not hard to implement).

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There are a number of key finding algorithms around, in particular the ones of Carol Krumhansl (most papers that I've seen always cite Krumhansl's methods)

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The algorithm by Carol Krumhansl is the best-known. The basic idea is very straightforward. A reference sample of pitches are drawn from music in a known key, and transposed to the other 11 keys. Major and minor keys must be handled separately. Then a sample of pitches are drawn from the music in an unknown key. This yields a 12-component pitch vector for each of 24 reference samples and one unknown sample, something like:

[ I,        I#,      II,       II#     III,       IV,      IV#,   V,     V#,    VI,     VI#,   VII    ]
[ 0.30,  0.02,  0.10,  0.05, 0.25,  0.20,  0.03, 0.30,  0.05,  0.13, 0.10  0.15]

Compute the correlation coefficient between the unknown pitch vector and each reference pitch vector and choose the best match.

Craig Sapp has written (copyrighted) code, available at http://sig.sapp.org/doc/examples/humextra/keycor/

David Temperley and Daniel Sleator developed a different, more difficult algorithm as part of their (copyrighted) Melisma package, available at http://www.link.cs.cmu.edu/music-analysis/ftp-contents.html

A (free) Matlab version of the Krumhansl algorithm is available from T. Eerola and P. Toiviainen in their Midi Toolbox: https://www.jyu.fi/hum/laitokset/musiikki/en/research/coe/materials/miditoolbox

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