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Source counting in speech mixtures by nonparametric Bayesian estimation of an infinite Gaussian mixture model

机译:无限高斯混合模型的非参数贝叶斯估计用于语音混合中的源计数

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In this paper we present a source counting algorithm to determine the number of speakers in a speech mixture. In our proposed method, we model the histogram of estimated directions of arrival with a non-parametric Bayesian infinite Gaussian mixture model. As an alternative to classical model selection criteria and to avoid specifying the maximum number of mixture components in advance, a Dirichlet process prior is employed over the mixture components. This allows to automatically determine the optimal number of mixture components that most probably model the observations. We demonstrate by experiments that this model outperforms a parametric approach using a finite Gaussian mixture model with a Dirichlet distribution prior over the mixture weights.
机译:在本文中,我们提出了一种源计数算法,用于确定语音混合中的说话者数量。在我们提出的方法中,我们使用非参数贝叶斯无限高斯混合模型对估计的到达方向的直方图进行建模。作为经典模型选择标准的替代方法,并且为了避免预先指定混合物组分的最大数量,先对混合物组分采用Dirichlet工艺。这样可以自动确定最有可能对观察结果建模的最佳混合组分数量。我们通过实验证明,该模型优于使用在混合权重之前具有Dirichlet分布的有限高斯混合模型的参数化方法。

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