Speaker adaptation by modeling the speaker variation in a continuous speech recognition system

Nikko Ström
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引用次数: 21

Abstract

A method for unsupervised instantaneous speaker adaptation is presented and evaluated on a continuous speech recognition task in a man-machine dialogue system. The method is based on modeling of the systematic speaker variation. The variation is modeled by a low-dimensional speaker space and the classification of speech segments is conditioned by the position in the speaker space. Because the effect of the speaker space position on the classification is determined in an off-line training procedure using the speakers in a training database, complex systematic speaker variation can be modeled. Speaker adaptation is achieved only by the constraint that the position in the speaker space is constant over each utterance. Therefore, no separate adaptation session is needed and the adaptation is present from the first utterance. Consequently, for a user there is no noticeable difference between this system and a speaker-independent system. The speaker model and the phonetic classification are implemented in the ANN part of a hybrid ANN/HMM system. In experiments with a pilot system, word accuracy is improved for utterances longer than three words and utterance level results are improved for utterances of all lengths.
通过对连续语音识别系统中说话人变化的建模来实现说话人的自适应
提出了一种无监督瞬时说话人自适应方法,并对人机对话系统中的连续语音识别任务进行了评价。该方法基于对系统说话人变化的建模。这种变化是通过低维说话人空间来建模的,语音片段的分类是由说话人空间中的位置决定的。由于说话人空间位置对分类的影响是在离线训练过程中使用训练数据库中的说话人确定的,因此可以对复杂的系统说话人变化进行建模。说话人的自适应只有在每个话语中说话人在说话人空间中的位置不变的约束下才能实现。因此,不需要单独的适应过程,适应从第一个话语开始就存在。因此,对于用户来说,该系统与扬声器无关系统之间没有明显的区别。在混合神经网络/HMM系统的神经网络部分实现了说话人模型和语音分类。在试点系统的实验中,对于超过三个单词的话语,单词的准确性得到了提高,对于所有长度的话语,单词水平的结果都得到了提高。
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