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Combining missing-feature theory, speech enhancement, and speaker-dependent/-independent modeling for speech separation

机译:结合缺失特征理论,语音增强和与说话人相关/独立的建模以进行语音分离

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摘要

This paper considers the separation and recognition of overlapped speech sentences assuming single-channel observation. A system based on a combination of several different techniques is proposed. The system uses a missing-feature approach for improving crosstalkoise robustness, a Wiener filter for speech enhancement, hidden Markov models for speech reconstruction, and speaker-dependent/-independent modeling for speaker and speech recognition. We develop the system on the Speech Separation Challenge database, involving a task of separating and recognizing two mixing sentences without assuming advanced knowledge about the identity of the speakers nor about the signal-to-noise ratio. The paper is an extended version of a previous conference paper submitted tor the challenge.
机译:本文在假设单通道观察的情况下考虑重叠语音句子的分离和识别。提出了一种基于几种不同技术的组合的系统。该系统使用缺少特征的方法来改善串扰/噪声的鲁棒性,使用维纳滤波器进行语音增强,使用隐马尔可夫模型进行语音重建,并使用与说话者无关的/独立于说话人和语音识别的模型。我们在语音分离挑战数据库上开发了该系统,该系统涉及一个分离和识别两个混合句子的任务,而无需假设有关说话者身份或信噪比的高级知识。本文是针对该挑战提交的先前会议论文的扩展版。

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