An Enhanced Centered Binary Tree of SVMs Algorithm for Phoneme Recognition

O. Gauci, C. J. Debono, P. Micallef
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引用次数: 1

Abstract

Support vector machines (SVMs) have lately emerged as very powerful binary classifiers, however their extension for multiclass classification is still an open area of research. When SVMs are applied to phoneme recognition, the large number of classes within this data set limits the practical use of these learning machines. In this paper we present the application of the centered binary tree of SVMs (c-BTS) algorithm, which is a multi-category classifier, to phoneme recognition. To enhance its capabilities, the c-BTS algorithm has been modified by using different posterior probability measurements to build the binary tree. The proposed algorithm has been tested through simulations on a number of phonemes taken from the TIMIT database. Results show that the proposed modification enhances the accuracy of the c-BTS algorithm while maintaining comparable computation times during testing. Moreover, this solution offers equivalent accuracies to other multiclass recognition methods.
一种增强的支持向量机中心二叉树音位识别算法
近年来,支持向量机(svm)作为一种非常强大的二分类器出现了,但其在多类分类中的扩展仍然是一个开放的研究领域。当svm应用于音素识别时,该数据集中大量的类限制了这些学习机的实际使用。本文提出了一种多类别分类器——支持向量机中心二叉树(c-BTS)算法在音素识别中的应用。为了提高c-BTS算法的性能,本文对c-BTS算法进行了改进,采用不同的后验概率测度来构建二叉树。所提出的算法已经通过模拟从TIMIT数据库中提取的许多音素进行了测试。结果表明,改进后的c-BTS算法在保持相当的计算时间的同时,提高了算法的精度。该方法具有与其他多类识别方法相当的精度。
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