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Speech Indexing Using Semantic Context Inference

机译:使用语义上下文推断的语音索引

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摘要

This study presents a novel approach to spoken document retrieval based on semantic context inference for speech indexing. Each recognized term in a spoken document is mapped onto a semantic inference vector containing a bag of semantic terms through a semantic relation matrix. The semantic context inference vector is then constructed by summing up all the semantic inference vectors. Such a semantic term expansion and re-weighting make the semantic context inference vector a suitable representation for speech indexing. The experiments were conducted on 1550 anchor news stories collected from Mandarin Chinese broadcast news of 198 hours. The experimental results indicate that the proposed speech indexing using the semantic context inference contributes to a substantial performance improvement of spoken document retrieval.
机译:这项研究提出了一种基于语义上下文推理的语音索引检索语音文档的新方法。语音文档中的每个已识别术语都通过语义关系矩阵映射到包含一袋语义术语的语义推断向量上。然后,通过对所有语义推断向量求和来构造语义上下文推断向量。这种语义术语扩展和重新加权使语义上下文推断向量成为语音索引的合适表示。实验是从198小时的普通话广播新闻中收集的1550个锚定新闻故事进行的。实验结果表明,所提出的使用语义上下文推断的语音索引有助于显着提高语音文档检索的性能。

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