A fast-match approach for robust, faster than real-time speaker diarization

Yan Huang, Oriol Vinyals, G. Friedland, Christian A. Müller, Nikki Mirghafori, Chuck Wooters
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引用次数: 45

Abstract

During the past few years, speaker diarization has achieved satisfying accuracy in terms of speaker Diarization Error Rate (DER). The most successful approaches, based on agglomerative clustering, however, exhibit an inherent computational complexity which makes real-time processing, especially in combination with further processing steps, almost impossible. In this article we present a framework to speed up agglomerative clustering speaker diarization. The basic idea is to adopt a computationally cheap method to reduce the hypothesis space of the more expensive and accurate model selection via Bayesian Information Criterion (BIC). Two strategies based on the pitch-correlogram and the unscented-trans-form based approximation of KL-divergence are used independently as a fast-match approach to select the most likely clusters to merge. We performed the experiments using the existing ICSI speaker diarization system. The new system using KL-divergence fast-match strategy only performs 14% of total BIC comparisons needed in the baseline system, speeds up the system by 41% without affecting the speaker Diarization Error Rate (DER). The result is a robust and faster than real-time speaker diarization system.
一种鲁棒的快速匹配方法,比实时扬声器拨号更快
在过去的几年里,说话人拨号在说话人拨号错误率(DER)方面取得了令人满意的精度。然而,基于聚集聚类的最成功的方法表现出固有的计算复杂性,这使得实时处理,特别是与进一步的处理步骤相结合,几乎是不可能的。在本文中,我们提出了一个加速凝聚聚类说话人化的框架。其基本思想是采用一种计算成本较低的方法,通过贝叶斯信息准则(BIC)来减少成本较高的模型选择的假设空间。基于音高相关图的两种策略和基于无气味变换的kl -散度近似分别作为快速匹配方法来选择最可能合并的聚类。我们使用现有的ICSI扬声器拨号系统进行了实验。使用kl -散度快速匹配策略的新系统仅执行基线系统所需的14%的BIC比较,在不影响说话人Diarization错误率(DER)的情况下,将系统速度提高了41%。结果表明,该系统鲁棒性好,速度快于实时说话人拨号系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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