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Accurate SVM classification using border training patterns

机译:使用边框培训模式精确SVM分类

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摘要

This paper proposes to use border training patterns in order to improve Support Vector Machine (SVM) classification accuracy of hyperspectral images. In the proposed approach, border training patterns which are close to the separating hyperplane, are obtained in two consecutive steps and considered as final training set. In the first step, clustering is performed to the full initial training data of each class. Then, cluster centers of each class are taken as the reduced size training data and forwarded to the second step. In the second step, this reduced size training data is used in the training of SVM and cluster centers which are obtained as support vectors at this step are regarded to be located close to the hyperplane border. Finally, cluster centers which are found as support vectors and original training samples contained in these clusters only are assigned as border training patterns. Experimental results are presented to show that the proposed approach improves SVM classification accuracy.
机译:本文建议使用边框培训模式以提高高光谱图像的支持向量机(SVM)分类精度。在所提出的方法中,靠近分离超平面的边界训练模式在两个连续的步骤中获得,并被视为最终训练集。在第一步中,对每个类的完整初始训练数据执行群集。然后,将每个类的群集中心被视为减少尺寸的训练数据并转发到第二步。在第二步中,该减小的尺寸训练数据用于SVM和集群中心作为在该步骤中获得的群集,被认为位于超平面边界附近。最后,发现作为支持向量和包含在这些集群中的原始训练样本的集群中心仅被分配为边框训练模式。提出了实验结果表明,所提出的方法提高了SVM分类准确性。

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