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A fixed-point algorithm for blind source separation with nonlinear autocorrelation

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Abstract

This paper addresses blind source separation (BSS) problem when source signals have the temporal structure with nonlinear autocorrelation. Using the temporal characteristics of sources, we develop an objective function based on the nonlinear autocorrelation of sources. Maximizing the objective function, we propose a fixed-point source separation algorithm. Furthermore, we give some mathematical properties of the algorithm. Computer simulations for sources with square temporal autocorrelation and the real-world applications in the analysis of the magnetoencephalographic recordings (MEG) illustrate the efficiency of the proposed approach. Thus, the presented BSS algorithm, which is based on the nonlinear measure of temporal autocorrelation, provides a novel statistical property to perform BSS.

Original languageEnglish
Pages (from-to)908-915
Number of pages8
JournalJournal of Computational and Applied Mathematics
Volume223
Issue number2
DOIs
StatePublished - 15 Jan 2009

Keywords

  • Blind source separation (BSS)
  • Fixed-point algorithm
  • Independent component analysis (ICA)
  • Nonlinear autocorrelation

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