首页> 外文会议>First International Workshop on Pattern Recognition with Support Vector Machines SVM 2002, Aug 10, 2002, Niagara Falls, Canada >Recognition of Consonant-Vowel (CV) Units of Speech in a Broadcast News Corpus Using Support Vector Machines
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Recognition of Consonant-Vowel (CV) Units of Speech in a Broadcast News Corpus Using Support Vector Machines

机译:使用支持向量机识别广播新闻语料库中的辅音(VV)语音单元

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This paper addresses the issues in recognition of the large number of subword units of speech using support vector machines (SVMs). In conventional approaches for multi-class pattern recognition using SVMs, learning involves discrimination of each class against all the other classes. We propose a close-class-set discrimination method suitable for large-class-set pattern recognition problems. In the proposed method, learning involves discrimination of each class against a subset of classes confusable with it and included in its close-class-set. We study the effectiveness of the proposed method in reducing the complexity of multi-class pattern recognition systems based on the one-against-the rest and one-against-one approaches. We discuss the effects of symmetry and uniformity in size of the close-class-sets on the performance for these approaches. We present our studies on recognition of 86 frequently occurring Consonant-Vowel units in a continuous speech database of broadcast news.
机译:本文解决了使用支持向量机(SVM)识别大量子词语音单元的问题。在使用SVM进行多类别模式识别的常规方法中,学习涉及将每个类别与所有其他类别进行区分。我们提出一种适用于大型集模式识别问题的近集集判别方法。在所提出的方法中,学习涉及对每个类别的区分,以区分与之混淆并包含在其紧密类别集中的类别的子集。我们基于一种针对其余方法和一对一方法的方法,研究了该方法在降低多类模式识别系统复杂度方面的有效性。我们讨论了对称性和均一性的大小对这些方法的性能的影响。我们在广播新闻的连续语音数据库中介绍了对86个常见辅音-语音单元识别的研究。

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