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A perspective on multichannel noise reduction in the time domain

机译:时域多通道降噪的观点

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Conventional multichannel noise reduction techniques are formulated by splitting the processed microphone observations into two terms: filtered noise-free speech and residual additive noise. The first term is treated as desired signal while the second is a nuisance. Then, the objective has typically been to reduce the nuisance while keeping the filtered speech as similar as possible to the clean speech. It turns out that this treatment of the overall filtered speech as the desired signal is inappropriate as will become clear soon. In this paper, we present a new study of the multichannel time-domain noise reduction filters. We decompose the noise-free microphone array observations into two components where the first is correlated with the target signal and perfectly coherent across the sensors while the second consists of residual interference. Then, well-known time-domain filters including the minimum variance distortionless response (MVDR), the space-time (ST) prediction, the maximum signal-to-noise ratio (SNR), the linearly constrained minimum variance (LCMV), the multichannel tradeoff, and Wiener filters are derived. Besides, the analytical performance evaluation of these time-domain filters is provided and new insights into their functioning are presented. Numerical results are finally given to corroborate our study.
机译:常规的多通道降噪技术是通过将处理后的麦克风观察结果分成两个术语来制定的:滤波后的无噪声语音和残余加性噪声。第一项被视为所需信号,而第二项则成为令人讨厌的信号。然后,通常的目的是减少干扰,同时将滤波后的语音保持与干净语音尽可能相似。事实证明,将整个滤波后的语音作为所需信号的这种处理是不合适的,这很快就会变得清楚起来。在本文中,我们提出了对多通道时域降噪滤波器的新研究。我们将无噪声的麦克风阵列观测结果分解为两个部分,其中第一个与目标信号相关,并且在整个传感器上完全一致,而第二个则由残留干扰组成。然后,众所周知的时域滤波器包括最小方差无失真响应(MVDR),空时(ST)预测,最大信噪比(SNR),线性约束最小方差(LCMV),多通道权衡,并导出维纳滤波器。此外,还提供了对这些时域滤波器的分析性能评估,并对它们的功能提出了新的见解。最后给出数值结果以证实我们的研究。

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