Multi-lingual phoneme recognition exploiting acoustic-phonetic similarities of sounds

J. Köhler
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引用次数: 101

Abstract

The aim of the work is to exploit the acoustic-phonetic similarities between several languages. In recent work cross-language HMM-based phoneme models have been used only for bootstrapping the language-dependent models and the multi-lingual approach has been investigated only on very small speech corpora. The author introduces a statistical distance measure to determine the similarities of sounds. Further, he presents a new technique to model multi-lingual phonemes. The experiments are conducted with the OGI Multi-Language Telephone Speech Corpus for the languages American English, German and Spanish. In the first experiment phoneme recognition rates between 39.0% and 53.9% are achieved using language-dependent models. Using cross-language models yields improvement for some phonemes, but on average a degradation of recognition performance is observed. However, cross-language models speeds up the cross-language transfer and reduce the size of the phoneme inventory of multi-lingual speech recognition systems. Finally, a new method of modelling multi-lingual phonemes, which can be used for a variety of languages, is presented. This technique reduces the number of phoneme-based units in a multi-lingual speech recognition system.
利用声音的声学-语音相似性进行多语言音素识别
这项工作的目的是利用几种语言之间的声学-语音相似性。在最近的工作中,基于跨语言hmm的音素模型仅用于引导语言依赖模型,多语言方法仅在非常小的语料库上进行了研究。作者引入了一种统计距离度量来确定声音的相似度。此外,他还提出了一种新的多语言音素建模技术。使用OGI多语言电话语音语料库对美国英语、德语和西班牙语进行了实验。在第一个实验中,使用语言依赖模型实现了39.0% ~ 53.9%的音素识别率。使用跨语言模型可以提高某些音素的识别性能,但平均而言会降低识别性能。然而,跨语言模型加速了跨语言迁移,减少了多语言语音识别系统的音素库大小。最后,提出了一种新的多语言音素建模方法,该方法可用于多种语言。该技术减少了多语言语音识别系统中基于音素的单元数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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