Subword-based automatic lexicon learning for Speech Recognition

Timo Mertens, S. Seneff
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引用次数: 1

Abstract

We present a framework for learning a pronunciation lexicon for an Automatic Speech Recognition (ASR) system from multiple utterances of the same training words, where the lexical identities of the words are unknown. Instead of only trying to learn pronunciations for known words we go one step further and try to learn both spelling and pronunciation in a joint optimization. Decoding based on linguistically motivated hybrid subword units generates the joint lexical search space, which is reduced to the most appropriate lexical entries based on a set of simple pruning techniques. A cascade of letter and acoustic pruning, followed by re-scoring N-best hypotheses with discriminative decoder statistics resulted in optimal lexical entries in terms of both spelling and pronunciation. Evaluating the framework on English isolated word recognition, we achieve reductions of 7.7% absolute on word error rate and 20.9% absolute on character error rate over baselines that use no pruning.
基于子词的语音识别自动词汇学习
我们提出了一个框架,用于自动语音识别(ASR)系统从相同训练词的多个话语中学习发音词汇,其中单词的词汇身份是未知的。我们不是只学习已知单词的发音,而是更进一步,尝试在联合优化中学习拼写和发音。基于语言动机的混合子词单元解码生成联合词汇搜索空间,并基于一组简单的修剪技术将其缩减为最合适的词汇条目。一个字母和声学的级联修剪,然后用判别解码器统计重新评分n个最佳假设,在拼写和发音方面产生最佳的词汇条目。通过对该框架在英语孤立词识别上的评估,我们实现了在不使用剪枝的基线上,单词错误率绝对降低7.7%,字符错误率绝对降低20.9%。
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