DocumentCode
3317044
Title
Analysis of the convergence properties of a self-normalized source separation neural network
Author
Deville, Yannick
Author_Institution
Lab. d´´Electron. Philips, Limeil-Brevannes, France
fYear
1997
fDate
16-18 April 1997
Firstpage
69
Lastpage
72
Abstract
An extended source separation neural network was derived by Cichocki et al. (1995) from the classical Herault-Jutten network. It was claimed to have several advantages, but its convergence properties were not described. In this paper, we exhaustively define the equilibrium points of the standard version of this network and analyze their stability. We prove that the stationary independent sources that this network can separate are the globally sub-gaussian signals. As the Herault-Jutten network applies to the same sources, we show that the advantages of the new network are not counterbalanced by a reduced field of application, which confirms its attractiveness.
Keywords
convergence; neural nets; signal processing; stability; classical Herault-Jutten network; convergence properties; equilibrium point; globally sub-gaussian signals; self-normalized source separation neural network; stationary independent sources; Antenna measurements; Array signal processing; Artificial neural networks; Blind source separation; Convergence; Electronic mail; Neural networks; Signal processing; Source separation; Stability analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Signal Processing Advances in Wireless Communications, First IEEE Signal Processing Workshop on
Conference_Location
Paris, France
Print_ISBN
0-7803-3944-4
Type
conf
DOI
10.1109/SPAWC.1997.630068
Filename
630068
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