Title :
A novel evolutionary approach for blind source separation based on stone´s method
Author :
Ahmed, Arif ; Zhang Chao Zhu ; Cang Yan
Author_Institution :
Coll. of Inf. & Commun. Eng., Harbin Eng. Univ., Harbin, China
Abstract :
In recent years, much research emerged to modify Stone´s BSS method for solving a blind source separation problem; Stone´s method used to recover original signals from the mixture. In this work, new direction has been opened to use an intelligent soft computing technique (Fast Genetic Algorithm) with the temporal predictability of signals based on Stone´s BSS method. Proposed algorithm has been compared with wellknown BSS algorithms (JADE, FICA, and Stone´s BSS) over super-Gaussian, sub-Gaussian, and Gaussian signals with linear mixture combination. Then eight voices have mixed randomly; and the proposed approach has successfully recovered the voices with high efficiency. Interpretation based on the responses of two different linear scalar filters to the same set of signals, which indicate to Short-term and Long-term linear predictors with tuned Half-life values (hL, hS) genetically is a powerful new technique for solving BSS problem. In addition to the benefits of the Stone´s method, the proposed algorithm overcomes the local minima problem by successfully jump out of the potential local minimum. Usually recovery methods depend on the difference between signals and mixture proprieties; generally, there are three famous properties for any signal: (1) Gaussian probability density function based on the central limit theorem (2) Degree of statistical independence (3) Temporal predictability. So (1&2) proprieties, have previously been used as a base for separation but in this work only 3rd property has been used. In order to check the effectiveness of the proposed algorithm two performance indexes are used: Interference to signal ratio (ISR), and Integral square error (ISE).
Keywords :
Gaussian processes; blind source separation; genetic algorithms; interference (signal); prediction theory; probability; statistical analysis; BSS; FICA; Gaussian probability density function; Gaussian signal; Half-life values tuned; ISE; ISR; JADE; Stone method; blind source separation; central limit theorem; degree of statistical independence; evolutionary approach; fast genetic algorithm; integral square error; intelligent soft computing technique; interference to signal ratio; linear mixture combination; linear scalar filter; long-term linear predictor; performance index; short-term linear predictor; signal recovery; subGaussian signal; superGaussian signal; temporal predictability; temporal signal prediction; Stone´s BSS; blind signal separation; fast genetic algorithms; signal temporal predictability;
Conference_Titel :
Signal Processing (ICSP), 2012 IEEE 11th International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4673-2196-9
DOI :
10.1109/ICoSP.2012.6491666