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Agglomerative information bottleneck for speaker diarization of meetings data

机译:会议数据的扬声器简化的附名信息瓶颈

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In this paper, we investigate the use of agglomerative Information Bottleneck (aIB) clustering for the speaker diarization task of meetings data. In contrary to the state-of-the-art diarization systems that models individual speakers with Gaussian Mixture Models, the proposed algorithm is completely non parametric . Both clustering and model selection issues of non-parametric models are addressed in this work. The proposed algorithm is evaluated on meeting data on the RT06 evaluation data set. The system is able to achieve Diarization Error Rates comparable to state-of-the-art systems at a much lower computational complexity.
机译:在本文中,我们调查了对会议数据的扬声器简化任务的聚集信息瓶颈(AIB)聚类的使用。彼此相反,塑造具有高斯混合模型的单个扬声器的各个扬声器,所提出的算法是完全非参数的。在这项工作中解决了非参数模型的聚类和模型选择问题。在RT06评估数据集上的满足数据上评估所提出的算法。该系统能够实现与最先进的系统相当的深度缓释误差率,以更低的计算复杂性。

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