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Using information theoretic distance measures for solving the permutation problem of blind source separation of speech signals

机译:利用信息理论距离测度解决语音信号盲源分离的置换问题

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The problem of blind source separation (BSS) of convolved acoustic signals is of great interest for many classes of applications. Due to the convolutive mixing process, the source separation is performed in the frequency domain, using independent component analysis (ICA). However, frequency domain BSS involves several major problems that must be solved. One of these is the permutation problem. The permutation ambiguity of ICA needs to be resolved so that each separated signal contains the frequency components of only one source signal. This article presents a class of methods for solving the permutation problem based on information theoretic distance measures. The proposed algorithms have been tested on different real-room speech mixtures with different reverberation times in conjunction with different ICA algorithms.
机译:卷积声信号的盲源分离(BSS)问题对于许多类别的应用都非常感兴趣。由于卷积混合过程,使用独立成分分析(ICA)在频域中执行源分离。但是,频域BSS涉及几个必须解决的主要问题。其中之一是置换问题。需要解决ICA的排列歧义性,以便每个分离的信号仅包含一个源信号的频率分量。本文提出了一种基于信息理论距离测度的解决置换问题的方法。结合不同的ICA算法,对具有不同混响时间的不同实际房间语音混合进行了测试。

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