Title :
Sparsity-based algorithms for blind separation of convolutive mixtures with application to EMG signals
Author :
Boudjellal, A. ; Abed-Meraim, Karim ; Aissa-El-Bey, Abdeldjalil ; Belouchrani, A. ; Ravier, Ph
Author_Institution :
PRISME Lab., Univ. of Orleans, Orleans, France
fDate :
June 29 2014-July 2 2014
Abstract :
In this paper we propose two iterative algorithms for the blind separation of convolutive mixtures of sparse signals. The first one, called Iterative Sparse Blind Separation (ISBS), minimizes a sparsity cost function using an approximate Newton technique. The second algorithm, referred to as Givens-based Sparse Blind Separation (GSBS) computes the separation matrix as a product of a whitening matrix and a unitary matrix estimated, via a Jacobi-like process, as the product of Givens rotations which minimize the sparsity cost function. The two sparsity based algorithms show significantly improved performance with respect to the time coherence based SOBI algorithm as illustrated by the simulation results and comparative study provided at the end of the paper.
Keywords :
Jacobian matrices; Newton method; blind source separation; convolution; electromyography; medical signal processing; EMG signals; GSBS; Givens rotation product; ISBS; Jacobi-like process; approximate Newton technique; convolutive mixtures; givens-based sparse blind separation; iterative algorithms; iterative sparse blind separation; separation matrix; sparse signals; sparsity cost function minimization; sparsity-based algorithms; time coherence based SOBI algorithm; unitary matrix estimation; whitening matrix; Approximation algorithms; Cost function; Electromyography; Jacobian matrices; Signal processing algorithms; Source separation; Sparse matrices; Approximate Newton Technique; BSS of EMG Signals; Givens Rotations; Sparsity;
Conference_Titel :
Statistical Signal Processing (SSP), 2014 IEEE Workshop on
Conference_Location :
Gold Coast, VIC
DOI :
10.1109/SSP.2014.6884607