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Multi-Class SVM Classifier Based on Pairwise Coupling

机译:基于成对耦合的多类SVM分类器

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摘要

In this paper, a novel structure is proposed to extend standard support vector classifier to multi-class cases. For a K-class classification task, an array of K optimal pairwise coupling classifier (O-PWC) is constructed, each of which is the most reliable and optimal for the corresponding class in the sense of cross entropy or square error. The final decision will be produced through combining the results of these K O-PWCs. The accuracy rate is improved while the computational cost will not increase too much. Our approach is applied to two applications: handwritten digital recognition on MNIST database and face recognition on Cambridge ORL face database, experimental results reveal that our method is effective and efficient.
机译:本文提出了一种将标准支持向量分类器扩展到多类情况的新结构。对于K类分类任务,构造了K个最优成对耦合分类器(O-PWC)的数组,从交叉熵或平方误差的意义上讲,每个分类对相应类都是最可靠和最佳的。通过结合这些K O-PWC的结果来做出最终决定。准确率提高,而计算成本不会增加太多。我们的方法应用于两种应用:MNIST数据库上的手写数字识别和Cambridge ORL人脸数据库上的人脸识别,实验结果表明我们的方法是有效和高效的。

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