基于因子分析的会话可变性自动语音识别补偿

Mickael Rouvier, M. Bouallegue, D. Matrouf, G. Linarès
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引用次数: 3

摘要

针对自动语音识别中的声学变异性问题,提出了一种基于因子分析的特征归一化方法。先前在ASR领域中使用了FA范式,以建模有用的信息:HMM状态相关的声学信息。在本文中,我们建议使用FA范式对无用信息(说话者或信道可变性)进行建模,以便从声学数据帧中删除无用信息。然后使用转换后的训练数据帧使用标准训练算法训练新的HMM模型。在解码之前,还对测试数据进行了转换。通过这种方法,我们在法国广播新闻中获得了绝对减少1.3%的WER。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Factor analysis based session variability compensation for Automatic Speech Recognition
In this paper we propose a new feature normalization based on Factor Analysis (FA) for the problem of acoustic variability in Automatic Speech Recognition (ASR). The FA paradigm was previously used in the field of ASR, in order to model the usefull information: the HMM state dependent acoustic information. In this paper, we propose to use the FA paradigm to model the useless information (speaker- or channel-variability) in order to remove it from acoustic data frames. The transformed training data frames are then used to train new HMM models using the standard training algorithm. The transformation is also applied to the test data before the decoding process. With this approach we obtain, on french broadcast news, an absolute WER reduction of 1.3%.
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