DocumentCode
2152616
Title
RLS algorithm for blind source separation in non-stationary environments
Author
Fanglin Gu ; Hang Zhang ; Xiaobo Tan ; Desheng Zhu
Author_Institution
Institute of Communication Engineering, PLA University of Science & Technology, China
fYear
2012
fDate
4-5 July 2012
Firstpage
162
Lastpage
165
Abstract
A new recursive least square (RLS) algorithm based on nonlinear principal component analysis (NPCA) is proposed to address the blind source separation (BSS) problem in non-stationary environment. Forgetting factor is introduced to improve the tracking ability in non-stationary environment. The Kalman filter is used to solve the NPCA problem since its outstanding tracking performance in non-stationary environments. Simulations using the real speech source signals are used to illustrate the performance of the new RLS algorithm in static and non-stationary environments. Results show that the new RLS algorithm has faster convergence rate and better tracking capacity compared with the stochastic gradient algorithm, and previous RLS algorithm.
Keywords
blind source separation (BSS); nonlinear principal component analysis (NPCA); recursive least square (RLS);
fLanguage
English
Publisher
iet
Conference_Titel
ICT and Energy Efficiency and Workshop on Information Theory and Security (CIICT 2012), Symposium on
Conference_Location
Dublin
Electronic_ISBN
978-1-84919-547-8
Type
conf
DOI
10.1049/cp.2012.1883
Filename
6513855
Link To Document