利用LMS滤波器去除盲源分离中残留串扰分量

R. Mukai, S. Araki, H. Sawada, S. Makino
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引用次数: 25

摘要

在混响环境下,采用独立分量分析(ICA)的盲源分离(BSS)性能显著下降。干扰信号混响产生的残余串扰分量是干扰信号性能下降的主要原因。本文介绍了一种用于细化BSS输出信号的后处理方法。提出了一种利用频域LMS滤波器估计分离信号中剩余串扰分量的新方法。通过非平稳谱减法去除估计分量。该方法精确地去除了残留分量,弥补了BSS在混响环境下的缺点。基于语音信号的实验结果表明,该方法可将信干扰比提高3 ~ 5db。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Removal of residual crosstalk components in blind source separation using LMS filters
The performance of blind source separation (BSS) using independent component analysis (ICA) declines significantly in a reverberant environment. The degradation is mainly caused by the residual crosstalk components derived from the reverberation of the jammer signal. This paper describes a post-processing method designed to refine output signals obtained by BSS. We propose a new method which uses LMS filters in the frequency domain to estimate the residual crosstalk components in separated signals. The estimated components are removed by non-stational spectral subtraction. The proposed method removes the residual components precisely, thus it compensates for the weakness of BSS in a reverberant environment. Experimental results using speech signals show that the proposed method improves the signal-to-interference ratio by 3 to 5 dB.
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