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Robust speech dereverberation with a neural network-based post-filter that exploits multi-conditional training of binaural cues

机译:基于神经网络的后置滤波器的强大语音去混响,利用双耳线索的多条件训练

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摘要

This study presents an algorithm for binaural speech dereverberation based on the supervised learning of short-term binaural cues. The proposed system combined a delay-and-sum beamformer (DSB) with a neural network-based post-filter that attenuated reverberant components in individual time-frequency (T-F) units. A multi-conditional training (MCT) procedure was used to simulate the uncertainties of short-term binaural cues in response to room reverberation by mixing the direct part of head related impulse responses (HRIRs) with diffuse noise. Despite being trained with only anechoic HRIRs, the proposed dereverberation algorithm was tested in a variety of reverberant environments and achieved considerable improvements relative to a coherence-based approach in terms of three objective metrics reflecting speech quality and speech intelligibility. Moreover, a systematic evaluation showed that the proposed system generalized very well to a wide range of acoustic conditions, including various measured binaural room impulse responses (BRIRs) reflecting different reverberation times, azimuth positions spanning the entire frontal hemifield, various source-receiver distances as well as different artificial heads.
机译:本研究提出了一种基于短期双耳线索的监督学习的双耳语音去混响算法。拟议的系统将延迟和求和波束形成器(DSB)与基于神经网络的后置滤波器相结合,该后置滤波器以单个时频(T-F)单位衰减混响分量。通过将头部相关的脉冲响应(HRIR)的直接部分与弥散噪声混合,使用了多条件训练(MCT)过程来模拟短期双耳提示对房间混响的不确定性。尽管仅使用无回声HRIR进行了训练,但所提出的去混响算法已在各种混响环境中进行了测试,并且相对于基于连贯性的方法而言,在反映语音质量和语音清晰度的三个客观指标方面取得了显着改进。此外,系统评估表明,所提出的系统可以很好地推广到各种声学条件,包括反映不同混响时间的各种测得的双耳室内冲激响应(BRIR),横跨整个额叶半场的方位角位置,各种声源-接收器距离以及不同的人工头。

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    May Tobias;

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  • 年度 2017
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  • 正文语种 eng
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