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BSS algorithm for dependent signals using Cook s nonGaussianity measure
Authors:Wang Fasong Li Hongwei Li Rui
Affiliation:Wang Fasong1 Li Hongwei1 Li Rui2
Abstract:Based on the generalization of the central limit theorem(CLT) to special dependent variables, this paper shows that maximization of the nonGaussianity(NG) measure can separate the statistically dependent source signals, and the novel NG measure is given by Cook's Euclidean distance using the Chebyshev-Hermite series expansion. Then, a novel blind source separation (BSS) algorithm for linear mixed signals is proposed using Cook's NG measure, which makes it possible to separate statistically dependent source signals. Moreover, the proposed separation algorithm can result in the famous FastICA algorithm. Simulation results show that the proposed separation algorithm is able to separate the dependent signals and yield ideal performance.
Keywords:blind source separation   independent component analysis   statistically dependent   Cook s distance  
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