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Batch-Online Semi-Blind Source Separation Applied to Multi-Channel Acoustic Echo Cancellation

机译:批处理在线半盲源分离应用于多通道回声消除

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摘要

Semi-blind source separation (SBSS) is a special case of the well-known blind source separation (BSS) when some partial knowledge of the source signals is available to the system. In particular, a batch adaptation in the frequency domain based on independent component analysis (ICA) can be effectively used to jointly perform source separation and multichannel acoustic echo cancellation (MCAEC) through SBSS without double-talk detection. Many issues related to the implementation of an SBSS system are discussed in this paper. After a deep analysis of the structure of the SBSS adaptation, we propose a constrained batch-online implementation that stabilizes the convergence behavior even in the worst case scenario of a single far-end talker along with the non-uniqueness condition on the far-end mixing system. Specifically, a matrix constraint is proposed to reduce the effect of the non-uniqueness problem caused by highly correlated far-end reference signals during MCAEC. Experimental results show that high echo cancellation can be achieved just as the misalignment remains relatively low without any preprocessing procedure to decorrelate the far-end signals even for the single far-end talker case.
机译:当源信号的某些部分知识可用于系统时,半盲源分离(SBSS)是众所周知的盲源分离(BSS)的特例。尤其是,基于频域的基于独立分量分析(ICA)的批量适应可以有效地用于通过SBSS进行声源分离和多通道声回波消除(MCAEC),而无需进行双向通话检测。本文讨论了与SBSS系统的实现有关的许多问题。在对SBSS适配的结构进行深入分析之后,我们提出了一种受约束的批处理在线实现,即使在单个远端讲话者的最坏情况以及远端的非唯一性条件下,也可以稳定收敛行为混合系统。具体而言,提出了一种矩阵约束来减少MCAEC期间由高度相关的远端参考信号引起的非唯一性问题的影响。实验结果表明,即使对于单个远端发话者情况,无需任何预处理程序就无需对远端信号进行解相关,就可以使失调保持相对较低,从而实现高回声消除。

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