首页> 外文会议>Annual conference of the International Speech Communication Association;INTERSPEECH 2011 >Structured Support Vector Machines for Noise Robust Continuous Speech Recognition
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Structured Support Vector Machines for Noise Robust Continuous Speech Recognition

机译:用于噪声鲁棒连续语音识别的结构化支持向量机

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The use of discriminative models is an interesting alternative to generative models for speech recognition. This paper examines one form of these models, structured support vector machines (SVMs), for noise robust speech recognition. One important aspect of structured SVMs is the form of the joint feature space. In this work features based on generative models are used, which allows model-based compensation schemes to be applied to yield robust joint features. However, these features require the segmentation of frames into words, or sub-words, to be specified. In previous work this segmentation was obtained using generative models. Here the segmentations are refined using the parameters of the structured SVM. A Viterbi-like scheme for obtaining "optimal" segmentations, and modifications to the training algorithm to allow them to be efficiently used, are described. The performance of the approach is evaluated on a noise corrupted continuous digit task: AURORA 2.
机译:区分模型的使用是生成模型用于语音识别的一种有趣的替代方法。本文研究了这些模型的一种形式,即结构化支持向量机(SVM),用于噪声鲁棒的语音识别。结构化SVM的一个重要方面是联合特征空间的形式。在这项工作中,使用了基于生成模型的特征,该特征允许基于模型的补偿方案应用于产生鲁棒的联合特征。但是,这些功能要求将帧分割为多个单词或子单词。在以前的工作中,使用生成模型获得了这种细分。在此,使用结构化SVM的参数对细分进行细化。描述了用于获得“最佳”分割的类似于维特比的方案,以及对训练算法的修改以允许它们被有效地使用。该方法的性能是在噪声破坏的连续数字任务AURORA 2上进行评估的。

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