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BSS algorithm for dependent signals using Cook's nonGaussianity measure 被引量:1

BSS algorithm for dependent signals using Cook's nonGaussianity measure
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摘要 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 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 ...
出处 《Journal of Southeast University(English Edition)》 EI CAS 2008年第S1期65-70,共6页 东南大学学报(英文版)
基金 The National Natural Science Foundation of China (No.60672049) the Science Foundation of Henan University of Technolo-gy(No.06XJC032)
关键词 blind source separation independent component analysis statistically dependent Cook’s distance blind source separation independent component analysis statistically dependent Cook s distance
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  • 1Hyvarinen A,Hoyer P O.Emergence of phases and shift invariant features by decomposition of natural images into independent feature subspaces[].Neural Computation.2000
  • 2Hyvarinen A,Hoyer P O.Topographic independent component analysis[].Neural Computation.2001
  • 3Cichocki A,Amari S.Adaptive blind signal and adaptive blind signal and image processing[]..2002
  • 4Hyvarinen A.Blind source separation by nonstationarity of variance: a cumulant based approach[].IEEE Trans Neural Net- works.2001
  • 5Cardoso J F.Multidimensional independent component analysis[].Proc IEEE Int Conf on Acoustics Speech and Signal Processing(ICASSP ).1998
  • 6Bach F R,Jordan M I.Beyond independent components: trees and clusters[].Journal of Machine Learning Research.2003
  • 7Cardoso J F.Dependence, correlation and Gaussianity in independent component analysis[].Journal of Machine Learning Research.2003
  • 8Yokoo T,Knighty W,Sirovich L.L2de-Gaussianization and independent component analysis[].Procth Int Sym on ICA and BSS(ICA).2003
  • 9Cook D,Buja A,Cabrera J.Projection pursuit indexes based on orthogonal function expansions[].J of Computational and Graphical Statistics.1993
  • 10Ziehe A,Muller K R.TDSEP—an efficient algorithm for blind separation using time structure[].Proc ICANN.1998

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