评估口语词检测中的搜索词强度

A. Torbati, J. Picone
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引用次数: 2

摘要

口语术语检测(STD)是基于文本的搜索的扩展,它允许用户键入关键字并搜索包含口语录音的音频文件。性能取决于许多外部因素,如声道、语言和搜索词的易混淆性。与基于文本的搜索不同,搜索词的质量在系统可用性的整体感知中起着重要作用。在本文中,我们提出了一个根据拼写预测搜索词强度的系统,该系统基于对参加NIST 2006 STD评估的几个口语术语检测系统的口语术语检测输出的分析。我们发现,大约57%的相关性可以通过搜索词来解释,但大量的混淆是由于其他声学建模问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing search term strength in spoken term detection
Spoken term detection (STD) is an extension of text-based searching that allows users to type keywords and search audio files containing recordings of spoken language. Performance is dependent on many external factors such as the acoustic channel, the language and the confusability of the search term. Unlike text-based searches, the quality of the search term plays a significant role in the overall perception of the usability of the system. In this paper, we present a system that predicts the strength of a search term from its spelling that is based on an analysis of spoken term detection output from several spoken term detection systems that participated in the NIST 2006 STD evaluation. We show that approximately 57% of the correlation can be explained from the search term, but that a significant amount of the confusability is due to other acoustic modeling issues.
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