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Optimization of SVM parameters using High Dimensional Model Representation and its application to hyperspectral images

机译:高维模型表示的SVM参数优化及其在高光谱图像中的应用

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Support vector machines (SVM) is one of the most important methods which has been frequently used in classification of remote sensing images. The classification performance of the SVM strictly depends on choice of convenient kernel function and its kernel parameters called model selection. In the case that the parameters are not appropriately chosen, SVM may result in relatively poor performance. Therefore, the choice of suitable kernel and its parameters is an important topic in classification problems. In this paper, we studied on the optimal selection of the radial basis kernel parameters of SVM using High Dimensional Model Representation (HDMR) which was recently proposed as an efficient tool to capture the input-output relationships in high-dimensional systems for many problems in science and engineering. The performance of the proposed approach was first analysed with some mathematical functions whose optimums are analytically known in comparison to the grid search method. Different experiments were also conducted with synthetic and hyperspectral datasets. The main advantage of the approach over the grid-search is to require relatively few number of training evaluation and hence less computational time in order to optimize the parameters. Therefore, training time required for SVM is significantly reduced.
机译:支持向量机(SVM)是最重要的方法之一,在遥感图像的分类中经常使用。 SVM的分类性能严格取决于方便的内核函数及其内核参数(称为模型选择)的选择。如果未正确选择参数,则SVM可能会导致性能相对较差。因此,选择合适的内核及其参数是分类问题中的重要主题。在本文中,我们使用高维模型表示(HDMR)研究了支持向量机的径向基核参数的最佳选择,该模型最近被提出为捕获高维系统中许多问题的有效工具,以捕获输入输出关系。科学与工程。首先使用一些数学函数来分析所提出方法的性能,这些数学函数的最佳值与网格搜索方法相比在分析上是已知的。还使用合成和高光谱数据集进行了不同的实验。与网格搜索相比,该方法的主要优点是需要相对较少的训练评估,因此需要较少的计算时间来优化参数。因此,大大减少了SVM所需的训练时间。

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