Title :
Blind source separation of more sources than mixtures using overcomplete representations
Author :
Lee, Te-Won ; Lewicki, Michael S. ; Girolami, Mark ; Sejnowski, Terrence J.
Author_Institution :
Comput. Neurobiol. Lab., Howard Hughes Med. Inst., La Jolla, CA, USA
fDate :
4/1/1999 12:00:00 AM
Abstract :
Empirical results were obtained for the blind source separation of more sources than mixtures using a previously proposed framework for learning overcomplete representations. This technique assumes a linear mixing model with additive noise and involves two steps: (1) learning an overcomplete representation for the observed data and (2) inferring sources given a sparse prior on the coefficients. We demonstrate that three speech signals can be separated with good fidelity given only two mixtures of the three signals. Similar results were obtained with mixtures of two speech signals and one music signal.
Keywords :
music; signal representation; speech processing; additive noise; blind source separation; coefficients; fidelity; independent component analysis; inferred source signals; learning; linear mixing model; mixtures; music signals; overcomplete representations; sparse prior; speech signals; Additive noise; Biology computing; Blind source separation; Dictionaries; Independent component analysis; Laboratories; Multiple signal classification; Principal component analysis; Speech analysis; Vectors;
Journal_Title :
Signal Processing Letters, IEEE