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Recovery from false rejection using statistical partial pattern trees for sentence verification

机译:使用统计部分模式树从错误拒绝中恢复句子验证

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摘要

In conversational speech recognition, recognizers are generally equipped with a keyword spotting capability to accommodate a variety of speaking styles. In addition, language model incorporation generally improves the recognition performance. In conversational speech keyword spotting, there are two types of errors, false alarm and false rejection. These two types of errors are not modeled in language models and therefore offset the contribution of the language models. This paper describes a partial pattern tree (PPT) to model the partial grammatical rules of sentences resulting from recognition errors and ungrammatical sentences. Using the PPT and a proposed sentence-scoring algorithm, the false rejection errors can be recovered first. A sentence verification approach is then employed to re-rank and verify the recovered sentence hypotheses to give the results. A PPT merging algorithm is also proposed to reduce the number of partial patterns with similar syntactic structure and thus reduce the PPT tree size. An automatic call manager and an airline query system are implemented to assess the performance. The keyword error rates for these two systems using the proposed approach achieved 10.40% and 14.67%, respectively. The proposed method was compared with conventional approaches to show its superior performance.
机译:在对话语音识别中,识别器通常配备关键字发现功能,以适应各种说话风格。此外,语言模型合并通常会提高识别性能。在对话语音关键词发现中,有两种错误类型,错误警报和错误拒绝。这两种类型的错误未在语言模型中建模,因此抵消了语言模型的影响。本文介绍了一种部分模式树(PPT),以对由于识别错误和不语法句子而产生的句子的部分语法规则进行建模。使用PPT和提出的句子评分算法,可以首先恢复错误拒绝错误。然后采用句子验证方法对重新排序的句子假设进行重新排序和验证,以给出结果。还提出了一种PPT合并算法,以减少语法结构相似的部分模式的数量,从而减小PPT树的大小。实现了自动呼叫管理器和航空公司查询系统以评估性能。使用建议的方法,这两个系统的关键字错误率分别达到了10.40%和14.67%。将该方法与常规方法进行比较,以显示其优越的性能。

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