Title :
Nonlinear signals separation of adaptive natural gradient learning
Author :
Ren, Ren ; Zhu, Shi-Hua ; Luo, Yong-Qiang ; Ren, Da-Nan ; Zen, Er-Lin
Abstract :
Novel blind source separation (BSS) of singular value decomposition (SVD) with adaptive minimizing mutual information is presented in order to extracting independent signal from mixture signals, without knowing the probability distribute of signal and channel parameters. Adaptive natural gradient decent algorithm is used to attain solution of de-mixing signals with the globe convergence and reliability. The study focus on applying cost function BSS method to extract the source signal. The experiment results indicate that the ICA adopting SVD and minimizing mutual information outperform the general blind method. The BSS with SVD combining adaptive minimizing mutual information has super-efficiency, which it can predict the extent of mixture signal and analyze searching direction. The different results can be attained by different nonlinear functions separating same mixture signals. The simulation results illustrate that the algorithm can be used in practice and improve the performance, the convergence and reliability. The method of adaptive changing the nonlinear of de-mixing is better avenues to break through the limited of nonlinear BSS.
Keywords :
adaptive signal processing; blind source separation; independent component analysis; learning (artificial intelligence); nonlinear functions; singular value decomposition; adaptive minimizing mutual information; adaptive natural gradient decent algorithm; adaptive natural gradient learning; blind source separation; demixing signals; general blind method; independent component analysis; nonlinear functions; nonlinear signals separation; singular value decomposition; source signal; Blind source separation; Convergence; Cost function; Data mining; Independent component analysis; Information analysis; Mutual information; Signal analysis; Singular value decomposition; Source separation; Adaptive natural gradient; Analysis; Bind source separation; Independent Component; Mutual information;
Conference_Titel :
Machine Learning and Cybernetics, 2005. Proceedings of 2005 International Conference on
Conference_Location :
Guangzhou, China
Print_ISBN :
0-7803-9091-1
DOI :
10.1109/ICMLC.2005.1527414