基于i向量的说话人验证的几何判别分析

Can Xu, Xianhong Chen, Liang He, Jia Liu
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引用次数: 0

摘要

许多基于i向量的说话人验证使用线性判别分析(LDA)作为后处理阶段。LDA最大化不同说话人对之间的Kullback-Leibler (KL)散度的算术平均值。但在说话人验证中,发散小的说话人容易被误判。LDA不是最优的,因为它不强调扩大小的散度。此外,LDA假设不同说话人的i向量是由具有相同类协方差的高斯分布很好地建模的。实际上,不同说话人的分布有不同的协方差。受这些观察结果的启发,我们探索了使用几何判别分析(GDA)来验证说话人,该分析在最大化KL散度时使用几何平均值而不是算术平均值。它更强调扩大小的分歧。此外,我们研究了考虑不同协方差的GDA (HGDA)的异方差扩展。在i-vector机器学习挑战上的实验表明,当训练说话人的数量越少,GDA和HGDA相对于LDA的相对性能提升越大。在训练数据有限的情况下,GDA和HGDA是更好的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geometric Discriminant Analysis for I-vector Based Speaker Verification
Many i-vector based speaker verification use linear discriminant analysis (LDA) as a post-processing stage. LDA maximizes the arithmetic mean of the Kullback-Leibler (KL) divergences between different pairs of speakers. However, for speaker verification, speakers with small divergence are easily misjudged. LDA is not optimal because it does not emphasize on enlarging small divergences. In addition, LDA makes an assumption that the i-vectors of different speakers are well modeled by Gaussian distributions with identical class covariance. Actually, the distributions of different speakers can have different covariances. Motivated by these observations, we explore speaker verification with geometric discriminant analysis (GDA), which uses geometric mean instead of arithmetic mean when maximizing the KL divergences. It puts more emphasis on enlarging small divergences. Furthermore, we study the heteroscedastic extension of GDA (HGDA), taking different covariances into consideration. Experiments on i-vector machine learning challenge indicate that, when the number of training speakers becomes smaller, the relative performance improvement of GDA and HGDA compared with LDA becomes larger. GDA and HGDA are better choices especially when training data is limited.
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