Open-vocabulary spoken term detection using graphone-based hybrid recognition systems

Murat Akbacak, D. Vergyri, A. Stolcke
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引用次数: 59

Abstract

We address the problem of retrieving out-of-vocabulary (OOV) words/queries from audio archives for spoken term detection (STD) task. Many STD systems use the output of an automatic speech recognition (ASR) system which has a limited and fixed vocabulary, and are not capable of detecting rare words of high information content, such as named entities. Since such words are often of great interest for a retrieval task it is important to index spoken archives in a way that allows a user to search an OOV query/term.1 In this work, we employ hybrid recognition systems which contain both words and subword units (graphones) to generate hybrid lattice indexes. We use a word-based STD system as our baseline, and present improvements by employing our proposed hybrid STD system that uses words plus graphones on the English broadcast news genre of the 2006 NIST STD task.
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基于石墨烯混合识别系统的开放词汇口语术语检测
我们解决了从音频档案中检索词汇外(OOV)单词/查询的问题,用于口语术语检测(STD)任务。许多STD系统使用自动语音识别(ASR)系统的输出,该系统具有有限和固定的词汇量,并且不能检测高信息含量的稀有词,例如命名实体。由于这些词通常是检索任务非常感兴趣的,因此以一种允许用户搜索OOV查询/术语的方式对口语档案进行索引是很重要的在这项工作中,我们采用包含词和子词单元(石墨元)的混合识别系统来生成混合晶格索引。我们使用基于单词的STD系统作为基准,并通过在2006年NIST STD任务的英语广播新闻类型中使用我们提出的混合STD系统(使用单词和graphone)来进行改进。
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