A Rank based Metric of Anchor Models for Speaker Verification

Yingchun Yang, Min Yang, Zhaohui Wu
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引用次数: 10

Abstract

In this paper, we present an improved method of anchor models for speaker verification. Anchor model is the method that represent a speaker by his relativity of a set of other speakers, called anchor speakers. It was firstly introduced for speaker indexing in large audio database. We suggest a rank based metric for the measurement of speaker character vectors in anchor model. Different from conventional metric methods which consider each anchor speaker equally and compare the log likelihood scores directly, in our method the relative order of anchor speakers is exploited to characterize target speaker. We have taken experiments on the YOHO database. The results show that EER of our method is 13.29% lower than that of conventional metric. Also, our method is more robust against the mismatching between test set and anchor set
基于秩的说话人锚定模型验证度量
本文提出了一种改进的锚定模型验证说话人的方法。锚定模型是用一个说话人对一组其他说话人的相对性来表示一个说话人的方法,这些说话人被称为锚定说话人。该方法最早用于大型音频数据库的说话人索引。我们提出了一种基于秩的度量来测量锚定模型中的说话人特征向量。与传统度量方法平等地考虑每个主播说话人并直接比较对数似然评分不同,该方法利用主播说话人的相对顺序来表征目标说话人。我们在YOHO数据库上做了实验。结果表明,该方法的EER比传统度量法低13.29%。此外,该方法对测试集和锚集之间的不匹配具有更强的鲁棒性
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