Title :
Separation of Dependent Autoregressive Sources Using Joint Matrix Diagonalization
Author :
Boudjellal, A. ; Mesloub, A. ; Abed-Meraim, K. ; Belouchrani, A.
Author_Institution :
Orleans Univ., Orleans, France
Abstract :
This letter proposes a novel technique for the blind separation of autoregressive (AR) sources. The latter relies on the joint diagonalization (JD) of appropriate AR matrix coefficients of the observed signals and can be applied to the separation of statistically dependent sources. The developed algorithm is referred to as `DARSS-JD´ (for Dependent AR Source Separation using JD). Through the simulation experiments, DARSS-JD is shown to overcome existing second order separation methods with a relatively moderate computational cost.
Keywords :
autoregressive processes; blind source separation; matrix algebra; AR matrix coefficients; DARSS-JD; dependent AR source separation using JD; dependent autoregressive blind source separation; joint matrix diagonalization; observed signals; relatively moderate computational cost; second order separation methods; Covariance matrices; Equations; Joints; Mathematical model; Noise; Signal processing algorithms; Technological innovation; Autoregressive Signals; blind sources separation; dependent sources; joint diagonalization;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2380312