Joint Separation and Dereverberation of Reverberant Mixtures with Multichannel Variational Autoencoder

S. Inoue, H. Kameoka, Li Li, Shogo Seki, S. Makino
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引用次数: 15

Abstract

In this paper, we deal with a multichannel source separation problem under a highly reverberant condition. The multichan- nel variational autoencoder (MVAE) is a recently proposed source separation method that employs the decoder distribu- tion of a conditional VAE (CVAE) as the generative model for the complex spectrograms of the underlying source sig- nals. Although MVAE is notable in that it can significantly improve the source separation performance compared with conventional methods, its capability to separate highly rever- berant mixtures is still limited since MVAE uses an instan- taneous mixture model. To overcome this limitation, in this paper we propose extending MVAE to simultaneously solve source separation and dereverberation problems by formulat- ing the separation system as a frequency-domain convolutive mixture model. A convergence-guaranteed algorithm based on the coordinate descent method is derived for the optimiza- tion. Experimental results revealed that the proposed method outperformed the conventional methods in terms of all the source separation criteria in highly reverberant environments.
多声道变分自编码器混响混响的联合分离与去噪
本文研究了高混响条件下的多通道源分离问题。多通道变分自编码器(MVAE)是近年来提出的一种信号源分离方法,它利用条件变分自编码器(CVAE)的解码器分布作为源信号复杂谱图的生成模型。尽管与传统方法相比,MVAE可以显著提高源分离性能,但由于MVAE使用的是瞬时混合模型,因此其分离高度不稳定混合物的能力仍然有限。为了克服这一限制,本文提出扩展MVAE,通过将分离系统表述为频域卷积混合模型来同时解决源分离和去噪问题。提出了一种基于坐标下降法的收敛保证优化算法。实验结果表明,在高混响环境下,该方法在所有声源分离指标上都优于传统方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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