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Artificial Cohort Generation Based on Statistics of Real Cohorts for GMM-Based Speaker Verification

机译:基于真实群组统计的人工群组生成基于GMM的说话人验证

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摘要

This paper discusses speaker verification (SV) using Gaussian mixture models (GMMs), where only utterances of enrolled speakers are required. Such an SV system can be realized using artificially generated cohorts instead of real cohorts from speaker databases. This paper presents a rational approach to set GMM parameters for artificial cohorts based on statistics of GMM parameters for real cohorts. Equal error rates for the proposed method are about 10% less than those for the previous method, where GMM parameters for artificial cohorts were set in an ad hoc manner.
机译:本文讨论使用高斯混合模型(GMM)的说话人验证(SV),其中仅要求说话者说话。可以使用人工生成的群组而不是来自说话者数据库的真实群组来实现这种SV系统。本文提出了一种基于真实人群的GMM参数统计信息的合理方法来为人工人群设置GMM参数。拟议方法的均等错误率比以前的方法低约10%,后者的人工队列的GMM参数以临时方式设置。

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