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Permutation-Free Cgmm: Complex Gaussian Mixture Model with Inverse Wishart Mixture Model Based Spatial Prior for Permutation-Free Source Separation and Source Counting

机译:无置换Cgmm:基于高斯逆矩阵的复杂高斯混合模型,基于空间先验,用于无置换源分离和源计数

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Here we propose a permutation-free cGMM (PF-cGMM), a new probabilistic model of observed mixtures, which can resolve permutation ambiguity between frequency bins, and is applicable even when the number of sources is unknown. A recently proposed complex Gaussian mixture model (cGMM) is highly effective for frequency bin-wise clustering when the number of sources is known. However, it cannot resolve the permutation ambiguity, and is inapplicable when the number of sources is unknown. The proposed PF-cGMM is an extension of the cGMM, which resolves these issues. The resolution of the permutation ambiguity can be realized by a spatial prior called a complex inverse Wishart mixture model (cIWMM). The absence of the permutation ambiguity facilitates source counting, which is performed by hierarchical clustering in this paper. Experiments showed that the PF-cGMM was able to (1) resolve the permutation ambiguity and (2) realize source separation even when the number of sources was unknown with little performance degradation compared to when it was known.
机译:在这里,我们提出了一种无置换的cGMM(PF-cGMM),这是一种新的观测混合物概率模型,可以解决频点之间的置换歧义,即使在源数未知的情况下也适用。当来源数量已知时,最近提出的复杂高斯混合模型(cGMM)对于频率二进制聚类非常有效。但是,它不能解决排列的歧义,并且在来源数量未知的情况下不适用。拟议的PF-cGMM是cGMM的扩展,可以解决这些问题。排列歧义的解决可以通过称为复杂逆Wishart混合模型(cIWMM)的空间先验来实现。置换歧义的不存在促进了源计数,这是通过本文中的层次聚类执行的。实验表明,PF-cGMM能够(1)解决排列模糊性,并且(2)即使在未知源数量的情况下也能实现源分离,与已知情况相比性能几乎没有下降。

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