基于独立分量分析的盲源分离遗传算法

C. Dadula, E. Dadios
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引用次数: 7

摘要

本文利用独立分量分析(ICA)实现了一种简单盲源分离的遗传算法(GA)。该过程没有像大多数ICA算法那样对混合信号进行定心、白化等预处理。该遗传算法以峰度最大化和互信息最小化作为适应度函数,以混合信号为输入,直接猜测分离矩阵的系数。只定义了一个适应度函数来考虑峰度和互信息的适应度。进行了三组模拟。前两个模拟分别使用了两个和三个合成信号的混合。第三个模拟使用了四个音频信号。结果表明,该算法能够有效地分离由合成信号组成的独立信号源。由四个音频信号组成的仿真只分离了三个信号。它无法提取一个信号,可能是因为这个信号几乎是高斯信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A genetic algorithm for blind source separation based on independent component analysis
This paper presents the implementation of genetic algorithm (GA) to a simple blind source separation(BSS) problem using independent component analysis(ICA). The process did not include pre-processing of mixture signals such as centering and whitening like most of ICA algorithms. The GA directly guesses the coefficients of the separating matrix given the mixture signals as inputs using maximization of kurtosis and minimization of mutual information as fitness function. Only one fitness function was defined to account the fitness for kurtosis and mutual information. Three set of simulations were performed. The first two simulations used the mixture of two and three synthetic signals, respectively. The third simulation used four audio signals. The results show that the proposed algorithm indeed separates the independent sources consisting of synthetic signals. The simulation consisting of four audio signals separates only three signals. It failed to extract one signal probably because the signal is almost a gaussian signal.
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