A nonparametric Bayesian approach for automatic discovery of a lexicon and acoustic units

A. Torbati, J. Picone
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Abstract

State of the art speech recognition systems use context-dependent phonemes as acoustic units. However, these approaches do not work well for low resourced languages where large amounts of training data or resources such as a lexicon are not available. For such languages, automatic discovery of acoustic units can be important. In this paper, we demonstrate the application of nonparametric Bayesian models to acoustic unit discovery. We show that the discovered units are linguistically meaningful. We also present a semi-supervised learning algorithm that uses a nonparametric Bayesian model to learn a mapping between words and acoustic units. We demonstrate that a speech recognition system using these discovered resources can approach the performance of a speech recognizer trained using resources developed by experts. We show that unsupervised discovery of acoustic units combined with semi-supervised discovery of the lexicon achieved performance (9.8% WER) comparable to other published high complexity systems. This nonparametric approach enables the rapid development of speech recognition systems in low resourced languages.
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一种用于自动发现词汇和声学单位的非参数贝叶斯方法
最先进的语音识别系统使用上下文相关的音素作为声学单位。然而,这些方法不适用于缺乏大量训练数据或资源(如词典)的低资源语言。对于这些语言,自动发现声学单位是很重要的。在本文中,我们展示了非参数贝叶斯模型在声学单元发现中的应用。我们表明发现的单位在语言上是有意义的。我们还提出了一种半监督学习算法,该算法使用非参数贝叶斯模型来学习单词和声学单元之间的映射。我们证明,使用这些发现的资源的语音识别系统可以接近使用专家开发的资源训练的语音识别器的性能。我们表明,声学单元的无监督发现与词典的半监督发现相结合,取得了与其他已发表的高复杂性系统相当的性能(9.8%的WER)。这种非参数方法使低资源语言的语音识别系统得以快速发展。
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