The invention discloses a music
separation method of an MFCC (
Mel Frequency Cepstrum Coefficient)-multi-repetition model in combination with an HPSS (High Performance Storage
System), and relates to the technical field of
signal processing. In consideration of
high probability of ignore of a gentle sound source and time-varying change characteristic of music, the sound
source type is analyzed through a
harmonic / percussive
sound separation (HPSS) method to separate out a
harmonic source, then MFCC characteristic parameters of the remaining
sound sources are extracted, and similar operation is performed on the
sound sources to construct a similar matrix so as to establish a multi-repetition structural model of the sound source suitable for tune transformation, so that a
mask matrix is obtained, and finally the
time domain waveform of a song and background music is obtained through ideal binary
mask (IBM) and fourier inversion. According to the method, effective separation can be performed on different types of sound source signals, so the separation precision is improved; meanwhile the method is low in complexity, high in
processing speed and higher in stability, and has broad application prospect in the fields such as singer retrieval, song retrieval, melody extraction and voice recognition in a
musical instrument background.