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Student's T nonnegative matrix factorization and positive semidefinite tensor factorization for single-channel audio source separation

机译:用于单声道音频源分离的Student T非负矩阵分解和正半定张量分解

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This paper presents a robust variant of nonnegative matrix factorization (NMF) based on complex Student's t distributions (t-NMF) for source separation of single-channel audio signals. The Itakura-Saito divergence NMF (Gaussian NMF) is justified for this purpose under an assumption that the complex spectra of source signals and those of the mixture signal are complex Gaussian distributed (the additiv-ity of power spectra holds). In fact, however, the source spectra are often heavy-tailed distributed. When the source spectra are complex Cauchy distributed, for example, the mixture spectra are also complex Cauchy distributed (the additivity of amplitude spectra holds). Using the complex t distribution that includes the complex Gaussian and Cauchy distributions as its special cases, we propose t-NMF as a unified extension of Gaussian NMF and Cauchy NMF. Furthermore, we propose the corresponding variant of positive semidefinite tensor factorization based on multivariate complex t distributions (t-PSDTF). The experimental results showed that while t-NMF and t-PSDTF were comparative to Gaussian counterparts in terms of peak performance, they worked much better on average because they are insensitive to initialization and tend to avoid local optima.
机译:本文提出了一种基于复杂学生t分布(t-NMF)的非负矩阵分解(NMF)的鲁棒变体,用于单声道音频信号的源分离。为此,Itakura-Saito发散NMF(高斯NMF)在源信号和混合信号的复数谱是复高斯分布(功率谱的可加性成立)的假设下是合理的。然而,实际上,源光谱通常是重尾分布的。例如,当源光谱是复杂柯西分布时,混合光谱也是复杂柯西分布(振幅谱的加和性成立)。使用包含复杂高斯和柯西分布的复杂t分布作为特例,我们提出t-NMF作为高斯NMF和柯西NMF的统一扩展。此外,我们提出了基于多元复t分布(t-PSDTF)的正半定张量因子分解的相应变体。实验结果表明,虽然t-NMF和t-PSDTF在峰值性能方面可与高斯同类产品相提并论,但它们的平均效果要好得多,因为它们对初始化不敏感并且倾向于避免局部最优。

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