Improving Rare Words Recognition through Homophone Extension and Unified Writing for Low-resource Cantonese Speech Recognition

Ho-Lam Chung, Junan Li, Pengfei Liu1, Wai-Kim Leung, Xixin Wu, H. Meng
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Abstract

Homophone characters are common in tonal syllable-based languages, such as Mandarin and Cantonese. The data-intensive end-to-end Automatic Speech Recognition (ASR) systems are more likely to mis-recognize homophone characters and rare words under low-resource settings. For the problem of low-resource Cantonese speech recognition, this paper presents a novel homophone extension method to integrate human knowledge of the homophone lexicon into the beam search decoding process with language model re-scoring. Besides, we propose an automatic unified writing method to merge the variants of Cantonese characters and standardize speech annotation guidelines, which enables more efficient utilization of labeled utterances by providing more samples for the merged characters. We empirically show that both homophone extension and unified writing improve the recognition performance significantly on both in-domain and out-of-domain test sets, with an absolute Character Error Rate (CER) decrease of around 5% and 18%.
利用同音字扩展和统一书写提高低资源粤语语音识别中的生僻词识别
同音字在以声调音节为基础的语言中很常见,例如普通话和广东话。数据密集型的端到端自动语音识别(ASR)系统在低资源环境下更容易对同音字和生僻词进行错误识别。针对广东话语音识别资源不足的问题,提出了一种新的同音词扩展方法,将人类同音词词汇知识融入到语言模型重评分的波束搜索解码过程中。此外,我们提出了一种自动统一书写的方法来合并粤语汉字变体,并规范了语音标注准则,通过为合并后的汉字提供更多的样本,提高了对标注话语的利用效率。我们的经验表明,同音字扩展和统一书写在域内和域外测试集上都显著提高了识别性能,绝对字符错误率(CER)分别下降了5%和18%左右。
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