nonlinear adaptive filters based on particle swarm optimization

nonlinear adaptive filters based on particle swarm optimization

;Faten BEN ARFIA;Mohamed BEN MESSAOUD;Mohamed ABID
journal of mass spectrometry 2009 Vol. 8 pp. 244-251
221
arfia2009leonardononlinear

Abstract

This paper presents a particle swarm optimization (PSO) algorithm to adjust the parameters of the nonlinear filter and to make this type of the filters more powerful for the elimination of the Gaussian noise and also the impulse noise. In this paper we apply the particle swarm optimization to the rational filters and we completed this work with the comparison between our results and other adaptive nonlinear filters like the LMS adaptive median filters and the no-adaptive rational filter.

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