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Subspace independent component analysis using vector kurtosis
Authors:Alok Sharma  Kuldip K. Paliwal
Affiliation:Signal Processing Laboratory, Griffith University, Brisbane, Australia
Abstract:This discussion presents a new perspective of subspace independent component analysis (ICA). The notion of a function of cumulants (kurtosis) is generalized to vector kurtosis. This vector kurtosis is utilized in the subspace ICA algorithm to estimate subspace independent components. One of the main advantages of the presented approach is its computational simplicity. The experiments have shown promising results in estimating subspace independent components.
Keywords:Blind source separation   Subspace ICA   Vector kurtosis
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