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A Novel Confidence Measure Based on Context Consistency for Spoken Term Detection

机译:基于上下文一致性的语音术语检测置信度新方法

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In this paper, we propose a novel confidence measure to improve the performance of spoken term detection (STD). The proposed confidence measure is based on the context consistency between a hypothesized word and its context in word lattice. When calculating the context consistency of a hypothesized word, the proposed confidence measure considers not only the semantic similarity between words but also the uncertainty of the context. To measure the uncertainty of the context, we employ the word occurrence probability, which is obtained by combining the overlapping hypotheses in word posterior lattice. Additionally, we also use two effective measures of semantic similarity to acquire more accurate context consistency for confidence measure. The experiments conducted on the Hub-4NE Mandarin database show that the proposed confidence measure can achieve improvements over the confidence measure which ignores the word occurrence probability of context word.
机译:在本文中,我们提出了一种新颖的置信度度量来改善口语术语检测(STD)的性能。所提出的置信度度量基于假设词与词格中其上下文之间的上下文一致性。在计算假设单词的上下文一致性时,建议的置信度度量不仅考虑单词之间的语义相似性,还考虑上下文的​​不确定性。为了测量上下文的不确定性,我们采用了单词出现概率,它是通过组合单词后格子中的重叠假设而获得的。此外,我们还使用两种有效的语义相似性度量来获取更准确的上下文一致性(用于置信度度量)。在Hub-4NE普通话数据库上进行的实验表明,所提出的置信度度量可以对置信度度量进行改进,置信度度量忽略了上下文词的单词出现概率。

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