Performance analysis using equivariant kernel density estimator in nonlinear mixture


Autoria(s): Leong, W. Y.; Homer, J. P.
Contribuinte(s)

Y. Miyanaga

Data(s)

01/01/2004

Resumo

This paper investigates the performance analysis of separation of mutually independent sources in nonlinear models. The nonlinear mapping constituted by an unsupervised linear mixture is followed by an unknown and invertible nonlinear distortion, are found in many signal processing cases. Generally, blind separation of sources from their nonlinear mixtures is rather difficult. We propose using a kernel density estimator incorporated with equivariant gradient analysis to separate the sources with nonlinear distortion. The kernel density estimator parameters of which are iteratively updated to minimize the output independence expressed as a mutual information criterion. The equivariant gradient algorithm has the form of nonlinear decorrelation to perform the convergence analysis. Experiments are proposed to illustrate these results.

Identificador

http://espace.library.uq.edu.au/view/UQ:100330

Idioma(s)

eng

Publicador

IEEE

Palavras-Chave #Adaptive signal processing #Blind source separation #Convergence of numerical methods #Decorrelation #Gradient methods #Independent component analysis #Nonlinear distortion #Parameter estimation #Signal detection #Signal sources #E1 #291700 Communications Technologies #700302 Telecommunications
Tipo

Conference Paper