利用语音树的充分统计初始化自适应

Zbynek Zajíc, Lukás Machlica, Ludek Muller
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引用次数: 1

摘要

在这项工作中,我们处理了在估计声学模型的说话人自适应特征变换时数据量少的问题。我们的目标是通过适当的初始化变换矩阵来弥补自适应数据的不足。描述了在这种情况下使用的方法,它们基于从最近的说话者那里收集额外的累积统计数据。所提出的初始化方法也是基于累积的统计数据,但在选择“最接近”的统计数据时,它也包含语音信息。在具有不同适应数据量的电话录音中,对补偿实际说话人数据缺失的初始化方法进行了测试。在最坏的情况下,在极少量的适应数据下,获得了5%的相对改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Initialization of adaptation by sufficient statistics using phonetic tree
In this work we deal with the problem of small amount of data when estimating a feature transformation for the speaker adaptation of an acoustic model. Our goal is to compensate for the lack of adaptation data by a proper initialization of transformation matrices. Methods used in such situations are described, they are based on collecting additional accumulated statistics from nearest speakers. The proposed initialization approach is based on accumulated statistics too, but it incorporates also phonetic information when selecting the “nearest” statistics. Initialization methods compensating for the absence of actual speaker's data are tested on telephone recordings with different amounts of adaptation data. In worst situation with extremely small amount of adaptation data relative improvement of 5% is obtained.
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