A subspace approach to single channel signal separation using maximum likelihood weighting filters

Our goal is to extract multiple source signals when only a single observation channel is available. We propose a new signal separation algorithm based on a subspace decomposition. The observation is transformed into subspaces of interest with different sets of basis functions. A flexible model for density estimation allows an accurate modeling of the distributions of the source signals in the subspaces, and we develop a filtering technique using a maximum likelihood (ML) approach to match the observed single channel data with the decomposition. Our experimental results show good separation performance on simulated mixtures of two music signals as well as two voice signals.

[1]  T J Sejnowski,et al.  Learning the higher-order structure of a natural sound. , 1996, Network.

[2]  Guy J. Brown,et al.  Computational auditory scene analysis , 1994, Comput. Speech Lang..

[3]  Daniel P. W. Ellis,et al.  A computer implementation of psychoacoustic grouping rules , 1993, Proceedings of the 12th IAPR International Conference on Pattern Recognition, Vol. 2 - Conference B: Computer Vision & Image Processing. (Cat. No.94CH3440-5).

[4]  William H. Press,et al.  Numerical recipes in FORTRAN (2nd ed.): the art of scientific computing , 1992 .

[5]  Barak A. Pearlmutter,et al.  Blind Source Separation by Sparse Decomposition in a Signal Dictionary , 2001, Neural Computation.

[6]  Guy J. Brown,et al.  Separation of speech from interfering sounds based on oscillatory correlation , 1999, IEEE Trans. Neural Networks.

[7]  Kunio Kashino,et al.  A Sound Source Separation System with the Ability of Automatic Tone Modeling , 1993, International Conference on Mathematics and Computing.

[8]  F. A. Seiler,et al.  Numerical Recipes in C: The Art of Scientific Computing , 1989 .

[9]  Sam T. Roweis,et al.  One Microphone Source Separation , 2000, NIPS.

[10]  William H. Press,et al.  The Art of Scientific Computing Second Edition , 1998 .

[11]  Barak A. Pearlmutter,et al.  Blind source separation by sparse decomposition , 2000, SPIE Defense + Commercial Sensing.