Impact of higher-order statistics on adaptive algorithms for blind source separation

The paper is devoted to present an analysis of the impact of higher order statistics (HOS) in adaptive blind source separation criteria. Despite the well known fact that they are necessary to provide source separation in a general framework, their impact on the performance of adaptive solutions is a...

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Published in2004 IEEE 5th Workshop on Signal Processing Advances in Wireless Communications : Lisbon, Portugal, 11-14 July, 2004 pp. 170 - 174
Main Authors Cavalcante, C.C., Romano, J.M.T.
Format Conference Proceeding
LanguageEnglish
Published IEEE 2004
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ISBN9780780383371
0780383370
DOI10.1109/SPAWC.2004.1439226

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Summary:The paper is devoted to present an analysis of the impact of higher order statistics (HOS) in adaptive blind source separation criteria. Despite the well known fact that they are necessary to provide source separation in a general framework, their impact on the performance of adaptive solutions is a still open research field. The approach of probability density function (pdf) recovering is used. In order to verify the analysis, two constrained adaptive algorithms are investigated. Namely, the multiuser kurtosis algorithm (MUK) and the multiuser constrained fitting probability density function algorithm (MU-CFPA) are used due to the desired characteristics of different HOS involved in their design. Simulation results are carried out to basis our analysis.
ISBN:9780780383371
0780383370
DOI:10.1109/SPAWC.2004.1439226