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Deep Casa for Talker-independent Monaural Speech Separation

机译:Deep Casa,用于独立于说话者的单声道语音分离

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Monaural speech separation is the task of separating target speech from interference in single-channel recordings. Although substantial progress has been made recently in deep learning based speech separation, previous studies usually focus on a single type of interference, either background noise or competing speakers. In this study, we address both speech and nonspeech interference, i.e., monaural speaker separation in noise, in a talker-independent fashion. We extend a recently proposed deep CASA system to deal with noisy speaker mixtures. To facilitate speech enhancement, a denoising module is added to deep CASA as a front-end processor. The proposed systems achieve state-of-the-art results on a benchmark noisy two-speaker separation dataset. The denoising module leads to substantial performance gain across various noise types, and even better generalization in noise-free conditions.
机译:单声道语音分离是将目标语音与单通道录音中的干扰分离的任务。尽管最近在基于深度学习的语音分离方面取得了实质性进展,但以前的研究通常集中于一种类型的干扰,即背景噪声或竞争性说话者。在这项研究中,我们以与讲话者无关的方式解决了语音和非语音干扰,即噪声中的单声道扬声器分离。我们扩展了最近提出的深层CASA系统,以处理嘈杂的扬声器混音。为了促进语音增强,将降噪模块添加到深度CASA作为前端处理器。所提出的系统在基准嘈杂的两扬声器分离数据集上实现了最新的结果。去噪模块可在各种噪声类型上带来可观的性能提升,甚至在无噪声条件下具有更好的通用性。

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