通过说话人特定补偿来适应说话人

S. Laxman, P. Sastry
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引用次数: 0

摘要

本文提出了一种新的说话人自适应策略,我们称之为说话人特定补偿。基本思想是转换说话者的语音,使其能够被为另一个说话者构建的依赖于说话者的分类器识别。补偿滤波器是使用说话人的标记语音样本作为倒谱矢量学习的。利用多模式分类器组合的思想,提出了一种新的独立于说话人的语音识别系统,该系统使用少量依赖于说话人的分类器以及为大量其他说话人学习的一组倒谱补偿向量。每个依赖说话人的分类器只在给定的一个说话人的语音样本上进行训练,此后从不重新训练或调整。我们给出了一些结果来说明这种针对说话人的补偿思想的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speaker adaptation through speaker specific compensation
This paper describes a new speaker adaptation strategy that we term speaker specific compensation. The basic idea is to transform speech of a speaker in a way that renders it recognizable by a speaker dependent classifier built for another speaker. The compensating filter is learnt as a cepstral vector using labeled speech samples of the speaker. Using some ideas about combining multiple pattern classifiers, we present a new speaker independent speech recognition system that uses a few speaker dependent classifiers along with a bank of cepstral compensating vectors learnt for a large number of other speakers. Each of the speaker dependent classifiers is trained on the given speech samples of only one speaker and is never retrained or adapted thereafter. We present some results to illustrate the effectiveness of this speaker specific compensation idea.
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