TY - JOUR
T1 - Hybrid linear and nonlinear complexity pursuit for blind source separation
AU - Shi, Zhenwei
AU - Zhang, Hongjuan
AU - Jiang, Zhiguo
PY - 2012/8
Y1 - 2012/8
N2 - Blind source separation (BSS) is an increasingly popular data analysis technique with many applications. Several methods for BSS using the statistical properties of original sources have been proposed; for a famous case, non-Gaussianity, this leads to independent component analysis (ICA). In this paper, we propose a hybrid BSS method based on linear and nonlinear complexity pursuit, which combines three statistical properties of source signals: non-Gaussianity, linear predictability and nonlinear predictability. A gradient learning algorithm is presented by minimizing a loss function. Simulations verify the efficient implementation of the proposed method.
AB - Blind source separation (BSS) is an increasingly popular data analysis technique with many applications. Several methods for BSS using the statistical properties of original sources have been proposed; for a famous case, non-Gaussianity, this leads to independent component analysis (ICA). In this paper, we propose a hybrid BSS method based on linear and nonlinear complexity pursuit, which combines three statistical properties of source signals: non-Gaussianity, linear predictability and nonlinear predictability. A gradient learning algorithm is presented by minimizing a loss function. Simulations verify the efficient implementation of the proposed method.
KW - Blind source separation (BSS)
KW - Independent component analysis (ICA)
KW - Linear predictability
KW - Nonlinear predictability
UR - https://www.scopus.com/pages/publications/84860385093
U2 - 10.1016/j.cam.2012.03.022
DO - 10.1016/j.cam.2012.03.022
M3 - 文章
AN - SCOPUS:84860385093
SN - 0377-0427
VL - 236
SP - 3434
EP - 3444
JO - Journal of Computational and Applied Mathematics
JF - Journal of Computational and Applied Mathematics
IS - 14
ER -