声源分离中带源集约束的局部高斯模型

Rintaro Ikeshita, M. Togami, Y. Kawaguchi, Yusuke Fujita, Kenji Nagamatsu
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引用次数: 2

摘要

为了提高卷积混合的盲音源分离性能,对Duong等人提出的具有全秩协方差矩阵的局部高斯模型(LGM)进行了扩展。以前的模型基本假设每个时频隙都有所有的源,可能无法捕捉到具有许多间歇静默期的信号的特性。因此,明确地引入了对每个时频间隙的源集的约束。这种方法可以看作是对传统时频掩模的稀疏性约束的一种放松。该模型在原始高斯局部模型参数、松弛版时频掩模和置换对齐的基础上进行了联合优化,实现了鲁棒无置换算法。我们还提出了一种新的多通道维纳滤波器,该滤波器采用了一种放松版的时频掩模加权。在有噪声语音信号上的实验结果表明,该模型与原有的局部高斯模型相比是有效的,并可与其扩展的多通道非负矩阵分解相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Gaussian model with source-set constraints in audio source separation
To improve the performance of blind audio source separation of convolutive mixtures, the local Gaussian model (LGM) having full rank covariance matrices proposed by Duong et al. is extended. The previous model basically assumes that all sources contribute to each time-frequency slot, which may fail to capture the characteristic of signals with many intermittent silent periods. A constraint on source sets that contribute to each time-frequency slot is therefore explicitly introduced. This approach can be regarded as a relaxation of the sparsity constraint in the conventional time-frequency mask. The proposed model is jointly optimized among the original local Gaussian model parameters, the relaxed version of the time-frequency mask, and a permutation alignment, leading to a robust permutation-free algorithm. We also present a novel multi-channel Wiener filter weighted by a relaxed version of the time-frequency mask. Experimental results over noisy speech signals show that the proposed model is effective compared with the original local Gaussian model and is comparable to its extension, the multi-channel nonnegative matrix factorization.
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