说话人适应方法的比较研究

B.G. Krishna, T. Sreenivas
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引用次数: 3

摘要

对于语音识别中的说话人自适应问题,其性能取决于自适应数据的可用性。在本文中,我们比较了几种现有的说话人自适应方法,即最大似然线性回归(MLLR)、特征语音(EV)、基于特征空间的MLLR (EMLLR)、分段特征语音(SEV)和基于层次特征语音(HEV)的方法。我们还通过修改现有的HEV方法开发了一种新方法,以在有限的可用数据场景中实现进一步的性能改进。在适应数据可获得性方面,除了MLLR方法在适应数据可获得性较高的情况下,改进后的混合动力(MHEV)方法在整个操作范围内都优于所有现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study of speaker adaptation methods
For the problem of speaker adaptation in speech recognition, the performance depends on the availability of adaptation data. In this paper, we have compared several existing speaker adaptation methods, viz. maximum likelihood linear regression (MLLR), eigenvoice (EV), eigenspace-based MLLR (EMLLR), segmental eigenvoice (SEV) and hierarchical eigenvoice (HEV) based methods. We also develop a new method by modifying the existing HEV method for achieving further performance improvement in a limited available data scenario. In the sense of availability of adaptation data, the new modified HEV (MHEV) method is shown to perform better than all the existing methods throughout the range of operation except the case of MLLR at the availability of more adaptation data.
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