用于盲源分离的小型十二面体传声器阵列

Motoki Ogasawara, Takanori Nishino, K. Takeda
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引用次数: 4

摘要

提出一种基于频域独立分量分析(FD-ICA)的声源分离方法。该方法充分利用了十二面体传声器阵列(DHMA),该阵列具有以下几个优点:1)阵列尺寸很小,易于操作;2)不同表面上传声器的幅值差异较大;在高频区域受空间混叠的影响较小。在该方法中,通过聚类声学传递函数来解决FD-ICA中的排列问题,将振幅和相位差作为频率的函数进行优化组合。实验使用直径为8 cm的DHMA和60个麦克风,其中使用所提出的算法分离多达12个声源(语音/乐器)。在12个信号源的情况下,该方法的分离性能达到了24 dB的信干扰比(SIR)改进分数。由于与传统方法相比,性能提高了10 dB,我们的结果证实了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A small dodecahedral microphone array for blind source separation
A sound source separation method based on frequency-domain independent component analysis (FD-ICA) is proposed. This method fully utilizes the dodecahedral microphone array (DHMA), which has several merits: 1) the size of the array is very small and thus easy to handle; 2) the amplitude difference among microphones on the different surfaces is large; and 3) it is less affected by spatial aliasing in the higher frequency region. In the proposed method, in order to solve the permutation problem in FD-ICA through clustering acoustic transfer functions, amplitude and phase differences are optimally combined as a function of frequency. A DHMA of 8 cm in diameter with 60 microphones is used for the experiment, where up to twelve sound sources (speech/musical instruments) are separated using the proposed algorithm. The separation performance of the proposed method attains 24 dB in the signal-to-interference ratio (SIR) improvement score for the case of twelve sources. Since the performance is better by up to 10 dB in comparison to the conventional method, our results confirm the effectiveness of the proposed method.
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