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The Segmental Bayesian Information Criterion and its Applications to Speaker Diarization

机译:分段贝叶斯信息准则及其在说话人歧化中的应用

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摘要

This paper discusses the use of the BIC with respect to speaker diarization, i.e. the problem of assigning the observation vectors of an audio file to a set of speakers of unknown cardinality. Our primary goals are to examine the two dominant approaches of the BIC, namely the global and the local and combine the strengths of the two variants into one intuitive criterion, the segmental-BIC. We then consider the asymptotic behavior of the segmental-BIC, when dealing with models that are highly misspecified, as the ones commonly used in the Speaker Diarization task. Our main result is a modified version of the BIC, which significantly outperforms the current variants over the entire range of operating points, and achieves performance close to those of highly computationally demanding algorithms.
机译:本文讨论了BIC在说话人区分方面的用途,即将音频文件的观察向量分配给一组未知基数的说话人的问题。我们的主要目标是研究BIC的两种主要方法,即全局方法和局部方法,并将两种变体的优势结合为一个直观的标准,即分段BIC。然后,当处理高度错误指定的模型时,我们将细分BIC的渐近行为视为“说话者区分”任务中常用的模型。我们的主要结果是BIC的修改版,在整个工作点范围内,其性能均明显优于当前版本,并实现了与计算量很大的算法相近的性能。

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