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Subband-Based Blind Separation for Convolutive Mixtures of Speech

机译:基于子带的语音卷积混合盲分离

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摘要

We propose utilizing subband-based blind source separation (BSS) for convolutive mixtures of speech. This is motivated by the drawback of frequency-domain BSS, i.e., when a long frame with a fixed long frame-shift is used to cover reverberation, the number of samples in each frequency decreases and the separation performance is degraded. In subband BSS, (1) by using a moderate number of subbands, a sufficient number of samples can be held in each subband, and (2) by using FIR filters in each subband, we can manage long reverberation. We confirm that subband BSS achieves better performance than frequency-domain BSS. Moreover, subband BSS allows us to select a separation method suited to each subband. Using this advantage, we propose efficient separation procedures that consider the frequency characteristics of room reverberation and speech signals (3) by using longer unmixing filters in low frequency bands and (4) by adopting an overlap-blockshift in BSS's batch adaptation in low frequency bands. Consequently, frequency-dependent subband processing is successfully realized with the proposed subband BSS.
机译:我们建议利用基于子带的盲源分离 (BSS) 进行卷积混合语音。这是由于频域BSS的缺点,即当使用具有固定长帧移位的长帧来覆盖混响时,每个频率的样本数量会减少,分离性能会降低。在子带BSS中,(1)通过使用适量的子带,可以在每个子带中容纳足够数量的样本,以及(2)通过在每个子带中使用FIR滤波器,我们可以管理长混响。我们确认子带 BSS 比频域 BSS 具有更好的性能。此外,子带 BSS 允许我们选择适合每个子带的分离方法。利用这一优势,我们提出了考虑室内混响和语音信号频率特性的高效分离程序:(3)在低频段使用较长的解混滤波器,以及(4)在BSS在低频段的批量适应中采用重叠块移位。因此,使用所提出的子带BSS成功地实现了与频率相关的子带处理。

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