欠确定条件下基于条件变分自编码器的双通道定向目标说话人提取

Rui Wang, Li Li, T. Toda
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引用次数: 1

摘要

本文研究了欠确定条件下的双通道目标说话人提取问题。对于双通道系统,广义旁瓣对消器(GSC)是估计产生干扰的块矩阵(BM)的常用结构,而几何源分离(GSS)可以作为利用方向信息实现块矩阵估计的一种方法。然而,由于缺乏强大的源模型,传统的GSS方法在欠确定条件下的性能受到限制。在本文中,我们提出了一种结合了基于几何约束的目标选择能力、更强大的源建模能力和非线性后处理能力的双通道TSE方法。利用目标方向信息作为几何约束,利用两个条件变分自编码器(CVAEs)分别对单个说话人的语音和干扰混合语音进行建模。在后处理中,利用从分离的干扰混合语音中估计出的理想时频比掩模提取目标说话人的语音。实验结果表明,在470 ms强混响条件下,与基准方法相比,该方法的信失真比(SDR)和源干扰比(SIR)分别提高了6.24 dB和8.37 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Direction-aware target speaker extraction with a dual-channel system based on conditional variational autoencoders under underdetermined conditions
In this paper, we deal with a dual-channel target speaker extraction (TSE) problem under underdetermined con-ditions. For the dual-channel system, the generalized sidelobe canceller (GSC) is a commonly used structure for estimating a blocking matrix (BM) to generate interference, and geometric source separation (GSS) can be used as an implementation of BM estimation utilizing directional information. However, the performance of the conventional GSS methods is limited under underdetermined conditions because of the lack of a powerful source model. In this paper, we propose a dual-channel TSE method that combines the ability of target selection based on geometric constraints, more powerful source modeling, and nonlinear postprocessing. The target directional information is used as a geometric constraint, and two conditional variational auto encoders (CVAEs) are used to model a single speaker's speech and interference mixture speech. For the postprocessing, an ideal ratio Time-Frequency (T-F) mask estimated from the separated interference mixture speech is used to extract the target speaker's speech. The experimental results demonstrate that the proposed method achieves 6.24 dB and 8.37 dB improvements compared with the baseline method in terms of signal-to-distortions ratio (SDR) and source-to-interferences ratio (SIR) respectively under strong reverberation for 470 ms.
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