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汉语语音检索的集外词问题与两阶段检索方法
孟莎 ; 刘加 ; MENG Sha ; LIU Jia
2010-06-09 ; 2010-06-09
关键词计算机应用 中文信息处理 汉语语音检索 集外词 词格 大词汇量连续语音识别 computer application Chinese information processing Chinese spoken term detection out-of-vocabulary lattice large-vocabulary continuous speech recognition TP391.1
其他题名Out-of-Vocabulary Issue in Chinese Spoken Term Detection and A Two-Stage Chinese Speech Retrieval Method
中文摘要该文针对大规模汉语语音检索任务提出汉语语音检索中的集外词问题和针对集外查询词的两阶段检索方法。汉语语音识别和检索中,集外词可以以词表词序列的形式被识别和检索到,因此被认为不存在集外词问题;该文发现集外查询词性能远远低于集内查询词,将此问题定义为汉语语音检索任务的集外词问题,并提出两阶段的检索方法,第一阶段通过模糊音素匹配的方法提高查全率,第二阶段通过词格修正的方法提高查准率。实验表明,两阶段的检索方法极大的提高了典型集外查询词的检索性能,FOM指标相对基线系统提高了24.1%。; While the Out-of-Vocabulary(OOV) problem remains a challenge for English spoken term detection tasks,it is underestimated for Chinese.This is because a Chinese OOV query term can still be matched as a sequence of Chinese characters,with each character itself being a word in the vocabulary.However,our experiments show that search accuracy levels differ significantly when a query is or is not in the vocabulary.We examine this problem with a word-lattice-based spoken term detection task.We propose a two-stage method by first locating candidates by partial phonetic matching and then refining the matching score with word lattice rescoring.Experiments show that the proposed method achieves a 24.1% relative improvement for OOV queries on a large-scale Chinese spoken term detection task.; 国家自然科学基金委员会与微软亚洲研究院联合资助项目(60776800); 国家863高技术研究发展计划资助项目(2006AA010101,2007AA04Z223)
语种中文 ; 中文
内容类型期刊论文
源URL[http://hdl.handle.net/123456789/55027]  
专题清华大学
推荐引用方式
GB/T 7714
孟莎,刘加,MENG Sha,等. 汉语语音检索的集外词问题与两阶段检索方法[J],2010, 2010.
APA 孟莎,刘加,MENG Sha,&LIU Jia.(2010).汉语语音检索的集外词问题与两阶段检索方法..
MLA 孟莎,et al."汉语语音检索的集外词问题与两阶段检索方法".(2010).
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