Acoustic data-driven pronunciation lexicon for large vocabulary speech recognition

Liang Lu, Arnab Ghoshal, S. Renals
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引用次数: 46

Abstract

Speech recognition systems normally use handcrafted pronunciation lexicons designed by linguistic experts. Building and maintaining such a lexicon is expensive and time consuming. This paper concerns automatically learning a pronunciation lexicon for speech recognition. We assume the availability of a small seed lexicon and then learn the pronunciations of new words directly from speech that is transcribed at word-level. We present two implementations for refining the putative pronunciations of new words based on acoustic evidence. The first one is an expectation maximization (EM) algorithm based on weighted finite state transducers (WFSTs) and the other is its Viterbi approximation. We carried out experiments on the Switchboard corpus of conversational telephone speech. The expert lexicon has a size of more than 30,000 words, from which we randomly selected 5,000 words to form the seed lexicon. By using the proposed lexicon learning method, we have significantly improved the accuracy compared with a lexicon learned using a grapheme-to-phoneme transformation, and have obtained a word error rate that approaches that achieved using a fully handcrafted lexicon.
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用于大词汇量语音识别的声学数据驱动语音词典
语音识别系统通常使用语言专家设计的手工发音词典。构建和维护这样的词典既昂贵又耗时。本文研究语音识别中语音词汇的自动学习。我们假设有一个小的种子词典,然后直接从单词级别转录的语音中学习新单词的发音。我们提出了两种基于声学证据来提炼新词的假定发音的实现。一种是基于加权有限状态传感器的期望最大化算法,另一种是基于加权有限状态传感器的Viterbi逼近算法。我们对电话会话语音的总机语料库进行了实验。专家词典有3万多字,我们从中随机抽取5000字组成种子词典。通过使用所提出的词典学习方法,与使用字形-音素转换学习的词典相比,我们显著提高了准确性,并且获得了接近使用完全手工制作的词典的单词错误率。
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