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Research on multi-class classification of Support Vector Data Description

机译:支持向量数据描述的多类分类研究

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摘要

Support Vector Data Description (SVDD) is a one-class classification method developed in recent years. It has been used in many fields because of its good performance and high executive efficiency when there are only one-class training samples. It has been proven that SVDD has less support vector numbers, less optimization time and faster testing speed than those of two-class classifier such as SVM. At present, researches and acquirable literatures about SVDD multi-class classification are little, which restricts the SVDD application. One SVDD multi-class classification algorithm is proposed in the paper. Based on minimum distance classification rule, the misclassification in multi-class classification is well solved and by applying the threshold strategy the rejection in multi-class classification is greatly alleviated. Finally, by classifying range profiles of three targets, the effect of kernel function parameter and SNR on the proposed algorithm is investigated and the effectiveness of the algorithm is testified by quantities of experiments.
机译:支持向量数据描述(SVDD)是近年来开发的一种分类方法。当只有一类培训样本时,由于其良好的性能和较高的执行效率,它已在许多领域中使用。已经证明,与两类分类器(如SVM)相比,SVDD具有更少的支持向量数,更少的优化时间和更快的测试速度。目前,有关SVDD多类别分类的研究和文献很少,这限制了SVDD的应用。提出了一种SVDD多类分类算法。基于最小距离分类规则,很好地解决了多类分类中的误分类问题,通过应用阈值策略,大大减轻了多类分类中的拒绝率。最后,通过对三个目标的距离轮廓进行分类,研究了核函数参数和信噪比对所提算法的影响,并通过大量实验验证了算法的有效性。

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