基于ga的声学信号ICA

R. Popa, L. Frangu
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引用次数: 1

摘要

在本文中,我们提出了一种遗传算法来分离两个独立分量的混合声信号。遗传算法在使用不同评估函数的两个变体中实现。第一种变体使用由信号概率密度函数的第四阶矩的归一化版本提供的统计特性,称为峰度,而第二种变体使用基于混合信号的绘制点的几何拓扑的评估。将这两种算法与另外两种经典ICA算法进行了比较。实验使用了各种音频信号,音乐声音和男性或女性的声音,但也可以使用任何其他声音信号,例如机动车辆的机械振动或工业环境中的其他噪音。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A GA-based ICA for acoustic signals
In this paper, we propose a genetic algorithm for the separation of two mixed acoustic signals in their independent components. The genetic algorithm is implemented in two variants that use different evaluation functions. The first variant uses statistical properties provided by a normalized version of the fourth moment of the probability density function of the signal, called kurtosis, while the second variant uses an evaluation based on geometric topology of the plotted points of the mixed signals. These two algorithms have been compared with two other classic ICA algorithms. The experiments were carried out using a variety of audio signals, musical sounds and male or female voices, but any other acoustic signals may be used, such as mechanical vibration of motor vehicles or other noises in the industrial environment.
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