汉语大词汇量连续语音识别的词错最小化方法实证研究

Jen-wei Kuo, Shih-Hung Liu, H. Wang, Berlin Chen
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引用次数: 2

摘要

本文对汉语大词汇量连续语音识别中的单词误差最小化方法进行了实证研究。首先,研究了基于最小电话误差(MPE)准则的中文LVCSR系统声学模型训练和自适应问题。其次,针对中文LVCSR系统,对用于重选n个最佳字串的单词误差最小化(WEM)准则进行了适当修改。最后,在MATBN普通话广播新闻语料库上进行了一系列的语音识别实验。实验结果表明,对于最初使用最大似然(ML)方法训练的系统,MPE训练方法将字符错误率(CER)降低了12%。同时,对于无监督声学模型自适应,基于mpe的线性回归(MPELR)自适应在CER降低方面优于传统的最大似然线性回归(MLLR)。当使用WEM解码方法进行N-best评分时,还观察到比传统的最大后验(MAP)解码方法有轻微的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Empirical Study of Word Error Minimization Approaches for Mandarin Large Vocabulary Continuous Speech Recognition
This paper presents an empirical study of word error minimization approaches for Mandarin large vocabulary continuous speech recognition (LVCSR). First, the minimum phone error (MPE) criterion, which is one of the most popular discriminative training criteria, is extensively investigated for both acoustic model training and adaptation in a Mandarin LVCSR system. Second, the word error minimization (WEM) criterion, used to rescore N-best word strings, is appropriately modified for a Mandarin LVCSR system. Finally, a series of speech recognition experiments is conducted on the MATBN Mandarin Chinese broadcast news corpus. The experiment results demonstrate that the MPE training approach reduces the character error rate (CER) by 12% for a system initially trained with the maximum likelihood (ML) approach. Meanwhile, for unsupervised acoustic model adaptation, MPE-based linear regression (MPELR) adaptation outperforms conventional maximum likelihood linear regression (MLLR) in terms of CER reduction. When the WEM decoding approach is used for N-best rescoring, a slight performance gain over the conventional maximum a posteriori (MAP) decoding method is also observed.
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