基于混响环境中声音定位的实时声源分离

M. Aoki, K. Furuya
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引用次数: 3

摘要

我们提出了一种实时源分离方法,即使在混响条件下也能很好地工作。在此之前,我们提出了一种称为SAFIA的方法,该方法通过使用多个麦克风获取的声音定位线索来分离声源。在混响条件下,SAFIA遭受“混响引起的频谱重叠”,这给分离的语音信号带来了失真。在扩展SAFIA概念的基础上,提出了一种基于简单信号处理操作的新方法(WAFD-SAFIA)。WAFD-SAFIA显著降低了“混响引起的频谱重叠”的影响。计算两种方法的信噪比(SNR)和信失真比(SDR),我们发现这种新方法在现实环境中优于SAFIA。此外,为了阐明频率分辨率对SAFIA的影响,我们确定了给定的频率分辨率是否会减少两个语音信号频率成分之间的重叠。
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Real-time source separation based on sound localization in a reverberant environment
We propose a real-time source separation method that works well even under reverberant conditions. Previously, we proposed a method called SAFIA, which segregates sound sources by using sound localization cues acquired by multiple microphones. Under reverberant conditions, SAFIA suffers from "spectral overlap caused by reverberation", which introduces distortion into the separated speech signals. Extending the concept of SAFIA, we propose a new method (WAFD-SAFIA) based on simple signal-processing operations. WAFD-SAFIA significantly reduces the effects of "spectral overlap caused by reverberation". Computing the SNR (signal-to-noise ratio) and SDR (signal-to-distortion ratio) for both methods, we found that this new method outperformed SAFIA in a realistic environment. Moreover, to clarify the effect of frequency resolution on SAFIA, we determined whether a given frequency resolution decreased the overlap between the frequency components of two speech signals.
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