用确定的多通道非负矩阵分解法对混响混合物进行联合分离和去噪

Hideaki Kagami, H. Kameoka, M. Yukawa
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引用次数: 49

摘要

提出了一种多通道非负矩阵分解(MNMF)的扩展,同时解决了源分离和去噪问题。虽然MNMF最初是在一个不确定的问题设置下制定的,其中源可能超过麦克风的数量,但MNMF的确定对立物,我们称之为确定MNMF (DMNMF),最近被提出并取得了显着的成功。这种方法特别值得注意的是,由于它不涉及矩阵反演计算,因此优化过程可以比欠确定版本快30倍以上。所有基于瞬时混合模型(包括MNMF)的方法都有一个缺点,那就是它们对长混响很弱。为了克服这一缺点,本文提出了一种使用频域卷积混合模型的DMNMF扩展。该方法的优化过程包括迭代更新(i)使用最大化最小化算法对每个源的光谱参数进行更新,(ii)使用迭代投影对分离矩阵进行更新,(iii)使用多通道线性预测对去噪滤波器进行迭代更新。实验结果表明,在高混响环境下,该方法比基线方法具有更高的分离性能和去噪性能。
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Joint Separation and Dereverberation of Reverberant Mixtures with Determined Multichannel Non-Negative Matrix Factorization
This paper proposes an extension of multichannel non-negative matrix factorization (MNMF) that simultaneously solves source separation and dereverberation. While MNMF was originally formulated under an underdetermined problem setting where sources can outnumber microphones, a determined counterpart of MNMF, which we call the determined MNMF (DMNMF), has recently been proposed with notable success. This approach is particularly notable in that the optimization process can be more than 30 times faster than the underdetermined version owing to the fact that it involves no matrix inversion computations. One drawback as regards all methods based on instantaneous mixture models, including MNMF, is that they are weak against long reverberation. To overcome this drawback, this paper proposes an extension of DMNMF using a frequency-domain convolutive mixture model. The optimization process of the proposed method consists of iteratively updating (i) the spectral parameters of each source using the majorization-minimization algorithm, (ii) the separation matrix using iterative projection, and (iii) the dereverberation filters using multichannel linear prediction. Experimental results showed that the proposed method yielded higher separation performance and dereverberation performance than the baseline method under highly reverberant environments.
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