DocumentCode
960420
Title
Adaptation of Bayesian Models for Single-Channel Source Separation and its Application to Voice/Music Separation in Popular Songs
Author
Ozerov, Alexey ; Philippe, Pierrick ; Bimbot, Frédéric ; Gribonval, Rémi
Author_Institution
Orange Lab., Cesson-Sevigne
Volume
15
Issue
5
fYear
2007
fDate
7/1/2007 12:00:00 AM
Firstpage
1564
Lastpage
1578
Abstract
Probabilistic approaches can offer satisfactory solutions to source separation with a single channel, provided that the models of the sources match accurately the statistical properties of the mixed signals. However, it is not always possible to train such models. To overcome this problem, we propose to resort to an adaptation scheme for adjusting the source models with respect to the actual properties of the signals observed in the mix. In this paper, we introduce a general formalism for source model adaptation which is expressed in the framework of Bayesian models. Particular cases of the proposed approach are then investigated experimentally on the problem of separating voice from music in popular songs. The obtained results show that an adaptation scheme can improve consistently and significantly the separation performance in comparison with nonadapted models.
Keywords
Bayes methods; source separation; speech processing; Bayesian models; model adaptation; popular songs; single-channel source separation; voice-music separation; Adaptation model; Bayesian methods; Image processing; Instruments; Laboratories; Multiple signal classification; Signal processing; Source separation; Speech processing; Wiener filter; Adaptive Wiener filtering; Bayesian model; Gaussian mixture model (GMM); expectation maximization (EM); maximum a posteriori (MAP); model adaptation; single-channel source separation; time–frequency masking;
fLanguage
English
Journal_Title
Audio, Speech, and Language Processing, IEEE Transactions on
Publisher
ieee
ISSN
1558-7916
Type
jour
DOI
10.1109/TASL.2007.899291
Filename
4244535
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