支持向量机用于噪声鲁棒ASR

M. Gales, A. Ragni, H. AlDamarki, C. Gautier
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引用次数: 31

摘要

使用判别分类器,如支持向量机(svm)与隐马尔可夫模型(hmm)相结合或作为替代,对于困难的语音识别任务具有许多优点。例如,如果使用适当形式的内核,模型可以利用观测序列中比hmm更多的依赖项。然而,标准支持向量机是二元分类器,语音是一个多类问题。此外,为了训练支持向量机来区分单词对,需要每个单词都出现在训练数据中。本文考察了这两个限制。描述了用于多类分类的基于树的约简方法,以及将它们应用于动态数据(如语音)时的一些问题。为了解决训练数据问题,可以使用基于hmm的合成的简化版本,它允许生成任何词对的数据。这些方法在两个噪声破坏的数字序列任务上进行了评估:AURORA 2.0;以及实际的车内收集数据。
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Support vector machines for noise robust ASR
Using discriminative classifiers, such as Support Vector Machines (SVMs) in combination with, or as an alternative to, Hidden Markov Models (HMMs) has a number of advantages for difficult speech recognition tasks. For example, the models can make use of additional dependencies in the observation sequences than HMMs provided the appropriate form of kernel is used. However standard SVMs are binary classifiers, and speech is a multi-class problem. Furthermore, to train SVMs to distinguish word pairs requires that each word appears in the training data. This paper examines both of these limitations. Tree-based reduction approaches for multiclass classification are described, as well as some of the issues in applying them to dynamic data, such as speech. To address the training data issues, a simplified version of HMM-based synthesis can be used, which allows data for any word-pair to be generated. These approaches are evaluated on two noise corrupted digit sequence tasks: AURORA 2.0; and actual in-car collected data.
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