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Statistical and Linguistic Knowledge Based Speech Recognition System: Language Acquisition Device for Machines

机译:基于统计和语言知识的语音识别系统:机器语言采集装置

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Today’s speech recognizers use very little knowledge of what language really is. They treat a sentence as if it would be generated by a random process and pay little or no attention to its linguistic structure. If recognizers knew about the rules of grammar, they would potentially make less recognition errors. Highly linguistically motivated grammars that are able to capture the deeper structure of language have evolved from the natural language processing community during the last few years. However, the speech recognition community mainly applies models which disregard that structure or applies very coarse probabilistic grammars. This paper aims at bridging the gap between statistical language models and elaborate linguistic grammars. Firstly an analysis of the need to integrate the conventional Statistical Language Models with the modern Linguistic Knowledge based language models is made, thereby justifying the Statistical and Linguistic Knowledge based Speech Recognition System which is asymptotically error free.
机译:今天的语音识别人员使用对真正的语言非常少了解。他们对待一个句子,好像它会被随机过程产生,并且对其语言结构几乎没有或不注意。如果识别人员知道语法规则,他们可能会减少识别错误。在过去几年中,能够捕获更深入的语言结构的高度语言激励语法已经从自然语言处理社区中演变。然而,语音识别社区主要适用忽视该结构或应用非常粗略概率语法的模型。本文旨在弥合统计语言模型之间的差距并详细阐述语言语法。首先,对具有现代语言知识基于语言模型的传统统计语言模型的需要分析,从而证明基于渐近的语言语音识别系统是无渐近的错误。

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