混响条件下的独立扬声器分离

Masood Delfarah, Yuzhou Liu, Deliang Wang
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引用次数: 4

摘要

扬声器分离是指分离包含两个或多个扬声器的混合信号的任务。最近在基于深度学习的独立于说话者的分离方面取得了令人印象深刻的进展。但这种进步是在消声条件下实现的。我们通过探索最近提出的深度CASA方法来解决混响条件下与对讲机无关的扬声器分离问题。为了有效地处理说话人分离和语音去混响,我们提出了一种两阶段策略,即首先分离混响话语然后去混响。两阶段深度CASA方法优于其他与对讲机无关的分离方法。此外,深度CASA算法大大提高了人类听众的语音清晰度,对听力受损的听众尤其有很大的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Talker-Independent Speaker Separation in Reverberant Conditions
Speaker separation refers to the task of separating a mixture signal comprising two or more speakers. Impressive advances have been made recently in deep learning based talker-independent speaker separation. But such advances are achieved in anechoic conditions. We address talker-independent speaker separation in reverberant conditions by exploring a recently proposed deep CASA approach. To effectively deal with speaker separation and speech dereverberation, we propose a two-stage strategy where reverberant utterances are first separated and then dereverberated. The two-stage deep CASA method outperforms other talker-independent separation methods. In addition, the deep CASA algorithm produces substantial speech intelligibility improvements for human listeners, with a particularly large benefit for hearing-impaired listeners.
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