DocumentCode :
945412
Title :
Exploitation of source nonstationarity in underdetermined blind source separation with advanced clustering techniques
Author :
Luo, Yuhui ; Wang, Wenwu ; Chambers, Jonathon A. ; Lambotharan, Sangarapillai ; Proudler, Ian
Author_Institution :
Samsung Electron. Res. Inst., Middlesex, UK
Volume :
54
Issue :
6
fYear :
2006
fDate :
6/1/2006 12:00:00 AM
Firstpage :
2198
Lastpage :
2212
Abstract :
The problem of blind source separation (BSS) is investigated. Following the assumption that the time-frequency (TF) distributions of the input sources do not overlap, quadratic TF representation is used to exploit the sparsity of the statistically nonstationary sources. However, separation performance is shown to be limited by the selection of a certain threshold in classifying the eigenvectors of the TF matrices drawn from the observation mixtures. Two methods are, therefore, proposed based on recently introduced advanced clustering techniques, namely Gap statistics and self-splitting competitive learning (SSCL), to mitigate the problem of eigenvector classification. The novel integration of these two approaches successfully overcomes the problem of artificial sources induced by insufficient knowledge of the threshold and enables automatic determination of the number of active sources over the observation. The separation performance is thereby greatly improved. Practical consequences of violating the TF orthogonality assumption in the current approach are also studied, which motivates the proposal of a new solution robust to violation of orthogonality. In this new method, the TF plane is partitioned into appropriate blocks and source separation is thereby carried out in a block-by-block manner. Numerical experiments with linear chirp signals and Gaussian minimum shift keying (GMSK) signals are included which support the improved performance of the proposed approaches.
Keywords :
blind source separation; eigenvalues and eigenfunctions; matrix algebra; minimum shift keying; statistics; BSS; GMSK; Gap statistics; Gaussian minimum shift keying; advanced clustering techniques; eigenvector classification; linear chirp signals; self-splitting competitive learning; source nonstationary; time-frequency distributions; underdetermined blind source separation; Blind source separation; Independent component analysis; Proposals; Robustness; Sensor arrays; Signal processing; Signal restoration; Source separation; Statistics; Time frequency analysis; Gap statistics; self-splitting competitive learning (SSCL); time-frequency (TF) representation; underdetermined blind source separation (BSS);
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2006.873367
Filename :
1634816
Link To Document :
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