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A sampling-based speaker clustering using utterance-oriented Dirichlet process mixture model and its evaluation on large-scale data

机译:基于面向说话的Dirichlet过程混合模型的基于样本的说话人聚类及其对大规模数据的评估

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An infinite mixture model is applied to model-based speaker clustering with sampling-based optimization to make it possible to estimate the number of speakers. For this purpose, a framework of non-parametric Bayesian modeling is implemented with the Markov chain Monte Carlo and incorporated in the utterance-oriented speaker model. The proposed model is called the utterance-oriented Dirichlet process mixture model (UO-DPMM). The present paper demonstrates that UO-DPMM is successfully applied on large-scale data and outperforms the conventional hierarchical agglomerative clustering, especially for large amounts of utterances.
机译:将无限混合模型应用于基于模型的说话者聚类,并使用基于采样的优化来估计说话者的数量。为此,使用马尔可夫链蒙特卡洛实现了非参数贝叶斯建模框架,并将其合并到面向发声的说话者模型中。提出的模型称为面向发声的Dirichlet过程混合模型(UO-DPMM)。本文证明,UO-DPMM已成功应用于大规模数据,并且优于传统的分层聚类聚类,尤其是对于大量话语而言。

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