会话语音中基于格的词片段检测

Kartik Audhkhasi, P. Georgiou, Shrikanth S. Narayanan
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引用次数: 1

摘要

先前针对语音中的词片段检测问题的方法主要集中在声学韵律特征上[1],[2]。本文提出,连续自动语音识别(ASR)系统的输出也可以用于为任务派生鲁棒的词法特征。我们假设由ASR系统产生的词格中的混淆可以用于检测词片段。提出了两组词汇特征——一组基于词混淆,另一组基于格中词假设之间的发音混淆。使用支持向量机(SVM)分类器进行的分类实验表明,在DARPA Transtac Iraqi-English (San Diego)语料库中选择的语料库上,这些词汇特征比之前提出的声学-韵律特征的表现要好约5.20%(相对)[3]。与仅使用声学韵律特征相比,这两种特征集的组合可将词片段检测准确率提高11.50%。
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Lattice-based lexical cues for word fragment detection in conversational speech
Previous approaches to the problem of word fragment detection in speech have focussed primarily on acoustic-prosodic features [1], [2]. This paper proposes that the output of a continuous Automatic Speech Recognition (ASR) system can also be used to derive robust lexical features for the task. We hypothesize that the confusion in the word lattice generated by the ASR system can be exploited for detecting word fragments. Two sets of lexical features are proposed -one which is based on the word confusion, and the other based on the pronunciation confusion between the word hypotheses in the lattice. Classification experiments with a Support Vector Machine (SVM) classifier show that these lexical features perform better than the previously proposed acoustic-prosodic features by around 5.20% (relative) on a corpus chosen from the DARPA Transtac Iraqi-English (San Diego) corpus [3]. A combination of both these feature sets improves the word fragment detection accuracy by 11.50% relative to using just the acoustic-prosodic features.
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