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A Kernel-Based Feature Selection Method for SVM With RBF Kernel for Hyperspectral Image Classification

机译:基于核的基于RBF核的SVM特征选择方法用于高光谱图像分类

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Hyperspectral imaging fully portrays materials through numerous and contiguous spectral bands. It is a very useful technique in various fields, including astronomy, medicine, food safety, forensics, and target detection. However, hyperspectral images include redundant measurements, and most classification studies encountered the Hughes phenomenon. Finding a small subset of effective features to model the characteristics of classes represented in the data for classification is a critical preprocessing step required to render a classifier effective in hyperspectral image classification. In our previous work, an automatic method for selecting the radial basis function (RBF) parameter (i.e., $ sigma $) for a support vector machine (SVM) was proposed. A criterion that contains the between-class and within-class information was proposed to measure the separability of the feature space with respect to the RBF kernel. Thereafter, the optimal RBF kernel parameter was obtained by optimizing the criterion. This study proposes a kernel-based feature selection method with a criterion that is an integration of the previous work and the linear combination of features. In this new method, two properties can be achieved according to the magnitudes of the coefficients being calculated: the small subset of features and the ranking of features. Experimental results on both one simulated dataset and two hyperspectral images (the Indian Pine Site dataset and the Pavia University dataset) show that the proposed method improves the classification performance of the SVM.
机译:高光谱成像通过许多连续的光谱带对材料进行全面描绘。这在天文学,医学,食品安全,法医学和目标检测等各个领域都是非常有用的技术。但是,高光谱图像包括多余的测量值,并且大多数分类研究都遇到了休斯现象。寻找有效特征的小子集以建模数据中表示的类别的特征以进行分类是使分类器在高光谱图像分类中有效所需的关键预处理步骤。在我们之前的工作中,提出了一种自动方法,用于为支持向量机(SVM)选择径向基函数(RBF)参数(即$ sigma $)。提出了一个包含类间和类内信息的准则,以测量相对于RBF内核的特征空间的可分离性。此后,通过优化准则获得了最佳的RBF核参数。这项研究提出了一种基于核的特征选择方法,其标准是对先前工作和特征的线性组合的整合。在这种新方法中,可以根据要计算的系数的大小实现两个属性:特征的小子集和特征的等级。在一个模拟数据集和两个高光谱图像(印度松站点数据集和帕维亚大学数据集)上的实验结果表明,该方法提高了支持向量机的分类性能。

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