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Knowledge-Based Word Lattice Reseoring in a Dynamic Context

机译:动态上下文中基于知识的单词格重构

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Recent advances in automatic speech recognition (ASR) technology continue to be based heavily on data-driven methods, meaning that the full benefits of such research are often not enjoyed in domains for which there is little training data available. Moreover, tractability is often an issue with these methods when conditioning for long-distance dependencies, entailing that many higher-level knowledge sources such as situational knowledge cannot be easily utilized in classification. This paper describes an effort to circumvent this problem by using dynamic contextual knowledge to rescore ASR lattice output using a dynamic weighted constraint satisfaction function. With this method, it was possible to achieve a roughly 80% reduction in WER for ASR in the context of an air traffic control scenario.
机译:自动语音识别(ASR)技术的最新进展仍然主要基于数据驱动的方法,这意味着在缺乏培训数据的领域中,往往无法享受到此类研究的全部收益。此外,在对远距离依赖进行条件化时,这些方法通常存在易处理性的问题,这导致许多高级知识源(如情境知识)无法轻松地用于分类。本文介绍了通过使用动态上下文知识重新评估ASR晶格输出(使用动态加权约束满足函数)来解决此问题的工作。使用这种方法,可以在空中交通管制情况下将ASR的WER降低约80%。

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