Improved spoken term detection using support vector machines with acoustic and context features from pseudo-relevance feedback

Tsung-wei Tu, Hung-yi Lee, Lin-Shan Lee
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引用次数: 18

Abstract

This paper reports a new approach to improving spoken term detection that uses support vector machine (SVM) with acoustic and linguistic features. As SVM is a good technique for discriminating different features in vector space, we recently proposed to use pseudo-relevance feedback to automatically generate training data for SVM training and use SVM to re-rank the first-pass results considering the context consistency in the lattices. In this paper, we further extend this concept by considering acoustic features at word, phone and HMM state levels and linguistic features of different order. Extensive experiments under various recognition environments demonstrate significant improvements in all cases. In particular, the acoustic features at the HMM state level offered the most significant improvements, and the improvements achieved by acoustic and linguistic features are shown to be additive.
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利用基于伪相关反馈的声学和上下文特征的支持向量机改进口语术语检测
本文报道了一种基于声学和语言特征的支持向量机(SVM)的语音术语检测方法。由于支持向量机是一种很好的识别向量空间中不同特征的技术,我们最近提出了使用伪相关反馈自动生成支持向量机训练的训练数据,并利用支持向量机在考虑格内上下文一致性的情况下对第一次通过的结果进行重新排序。在本文中,我们进一步扩展了这一概念,考虑了单词、电话和HMM状态级别的声学特征以及不同顺序的语言特征。在各种识别环境下的大量实验表明,在所有情况下都有显著的改进。特别是,HMM状态水平的声学特征提供了最显著的改进,声学和语言特征所取得的改进被证明是加性的。
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