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Classification of VHR Images Based on SVM and Multiobjective Evolutionary Optimization

机译:基于SVM和多目标进化优化的VHR图像分类。

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This paper proposes an efficient classification system suitable for VHR images based on SVM and multiobjective optimization. The aim is to detect the optimal number of structural elements to be applied to the VHR image in addition to the optimal SVM parameters in a fully automatic way. To this end, the search process is guided by the simultaneous optimization of two different criteria. The first is the cross-validation accuracy computed on the training set, whereas the second one is related to class separability. In particular, we adopt the between and within class distance in the higher dimensional kernel space. To solve this problem, we use a multiobjective evolutionary algorithm based on decomposition (MOEA/D). MOEA/ED decomposes the multiobjective optimization problem into a number of scalar optimization sub-problems and optimizes them simultaneously. At convergence, a set of Pareto optimal solutions is obtained. For generating the final solution we propose to aggregate the Pareto optimal solutions by means of a simple majority voting (MV) rule. Experiments on a VHR image are reported and discussed.
机译:本文提出了一种基于支持向量机和多目标优化的适用于VHR图像的有效分类系统。目的是以全自动方式检测除最佳SVM参数外,还要检测要应用于VHR图像的最佳结构元素数量。为此,搜索过程以两个不同条件的同时优化为指导。第一个是在训练集上计算出的交叉验证准确性,而第二个是与类的可分离性有关。特别地,我们在高维内核空间中采用类间和类内距离。为了解决这个问题,我们使用了基于分解的多目标进化算法(MOEA / D)。 MOEA / ED将多目标优化问题分解为多个标量优化子问题,并同时对其进行优化。收敛时,获得了一组帕累托最优解。为了生成最终解决方案,我们建议通过简单的多数投票(MV)规则汇总Pareto最优解决方案。在VHR图像上的实验得到了报道和讨论。

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