论文标题

关于基于DNN的非线性多通道语音增强的空间,光谱和时间处理的作用

On the Role of Spatial, Spectral, and Temporal Processing for DNN-based Non-linear Multi-channel Speech Enhancement

论文作者

Tesch, Kristina, Mohrmann, Nils-Hendrik, Gerkmann, Timo

论文摘要

Employing deep neural networks (DNNs) to directly learn filters for multi-channel speech enhancement has potentially two key advantages over a traditional approach combining a linear spatial filter with an independent tempo-spectral post-filter: 1) non-linear spatial filtering allows to overcome potential restrictions originating from a linear processing model and 2) joint processing of spatial and tempo-spectral information allows to exploit不同信息来源之间的相互依存关系。最近提出了各种基于DNN的非线性过滤器,报告了良好的增强性能。但是,对于将网络体系结构设计变成机会游戏的内部机制知之甚少。因此,在本文中,我们执行实验,以更好地了解基于DNN的非线性过滤器对空间,光谱和时间信息的内部处理。一方面,我们在艰难的语音提取方案中的实验证实了非线性空间滤波的重要性,这在0.24 POLQA得分上优于Oracle线性空间滤波器。另一方面,我们证明了关节处理导致较大的性能差距为0.4 POLQA分数在利用光谱与时间信息之外的网络体系结构之间得分。

Employing deep neural networks (DNNs) to directly learn filters for multi-channel speech enhancement has potentially two key advantages over a traditional approach combining a linear spatial filter with an independent tempo-spectral post-filter: 1) non-linear spatial filtering allows to overcome potential restrictions originating from a linear processing model and 2) joint processing of spatial and tempo-spectral information allows to exploit interdependencies between different sources of information. A variety of DNN-based non-linear filters have been proposed recently, for which good enhancement performance is reported. However, little is known about the internal mechanisms which turns network architecture design into a game of chance. Therefore, in this paper, we perform experiments to better understand the internal processing of spatial, spectral and temporal information by DNN-based non-linear filters. On the one hand, our experiments in a difficult speech extraction scenario confirm the importance of non-linear spatial filtering, which outperforms an oracle linear spatial filter by 0.24 POLQA score. On the other hand, we demonstrate that joint processing results in a large performance gap of 0.4 POLQA score between network architectures exploiting spectral versus temporal information besides spatial information.

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