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Beamspace blind signal separation for speech enhancement

机译:波束空间盲信号分离以增强语音

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摘要

Signal processing methods for speech enhancement are of vital interest for communications equipments. In particular, multichannel algorithms, which perform spatial filtering to separate signals that have overlapping frequency content but different spatial origins, are important for a wide range of applications. Two of the most popular multichannel methods are blind signal separation (BSS) and beam-forming. Briefly, (BSS) separates mixed sources by optimizing the statistical independence among the outputs whilst beamforming optimizes the look direction of the desired source(s). However, both methods have separation limitations, in that BSS succumbs to reverberant environments and beamforming is very sensitive to array model mismatch. In this paper, we propose a novel hybrid scheme, called beamspace BSS, which is intended to compensate the aforementioned separation weaknesses by jointly optimizing the spatial selectivity and statistical independence of the sources. We show that beamspace BSS outperforms the separation performance of the conventional sensor space BSS significantly, particularly in reverberant room environments.
机译:用于语音增强的信号处理方法对于通信设备至关重要。特别地,执行空间滤波以分离具有重叠的频率内容但空间起源不同的信号的多通道算法对于广泛的应用很重要。最受欢迎的两种多通道方法是盲信号分离(BSS)和波束形成。简而言之,(BSS)通过优化输出之间的统计独立性来分离混合光源,而波束成形可优化所需光源的外观方向。但是,这两种方法都存在分离限制,因为BSS会屈服于混响环境,并且波束成形对阵列模型不匹配非常敏感。在本文中,我们提出了一种新颖的混合方案,称为波束空间BSS,旨在通过共同优化源的空间选择性和统计独立性来弥补上述分离弱点。我们显示,波束空间BSS明显优于常规传感器空间BSS的分离性能,尤其是在混响房间环境中。

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