将形态学整合到自动语音识别中

H. Sak, M. Saraçlar, Tunga Güngör
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引用次数: 12

摘要

本文提出了一种将形态学作为模型集成到形态学丰富语言自动语音识别系统中的新方法。高词汇外(OOV)字率一直是词形生成语言的ASR面临的主要挑战。解决这个问题的标准方法是在语言建模中从词转移到子词单位,对系统的唯一改变是在这些单位上估计的语言模型。相反,我们建议将形态学作为其他任何知识来源(如词典和语言模型)直接集成到搜索网络中。语言的形态解析器作为有限状态词法换能器实现,可以看作是一个计算词法。与ASR通常使用的静态词汇表相比,计算词汇表表示动态词汇表。我们将该计算词典的换能器与基于词素的统计语言模型组合在一起,从而得到一个词素集成的搜索网络。由此产生的搜索网络只生成符合语法的词形,并且由于降低了OOV率而提高了识别精度。我们给出了土耳其广播新闻转录的实验结果,并表明它优于50 K和100 K词汇模型,而200 K词汇模型略好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating morphology into automatic speech recognition
This paper proposes a novel approach to integrate the morphology as a model into an automatic speech recognition (ASR) system for morphologically rich languages. The high out-of-vocabulary (OOV) word rates have been a major challenge for ASR in morphologically productive languages. The standard approach to this problem has been to shift from words to sub-word units in language modeling, and the only change to the system is in the language model estimated over these units. In contrast, we propose to integrate the morphology as other any knowledge source - such as the lexicon, and the language model- directly into the search network. The morphological parser for a language, implemented as a finite-state lexical transducer, can be considered as a computational lexicon. The computational lexicon represents a dynamic vocabulary in contrast to a static vocabulary generally used for ASR. We compose the transducer for this computational lexicon with a statistical language model over lexical morphemes to obtain a morphology-integrated search network. The resulting search network generates only grammatical word forms and improves the recognition accuracy due to reduced OOV rate. We give experimental results for Turkish broadcast news transcription, and show that it outperforms the 50 K and 100 K vocabulary word models while the 200 K vocabulary word model is slightly better.
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