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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Rotation-Based Support Vector Machine Ensemble in Classification of Hyperspectral Data With Limited Training Samples
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Rotation-Based Support Vector Machine Ensemble in Classification of Hyperspectral Data With Limited Training Samples

机译:基于旋转的支持向量机集成在训练样本有限的高光谱数据分类中

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摘要

With different principles, support vector machines (SVMs) and multiple classifier systems (MCSs) have shown excellent performances for classifying hyperspectral remote sensing images. In order to further improve the performance, we propose a novel ensemble approach, namely, rotation-based SVM (RoSVM), which combines SVMs and MCSs together. The basic idea of RoSVM is to generate diverse SVM classification results using random feature selection and data transformation, which can enhance both individual accuracy and diversity within the ensemble simultaneously. Two simple data transformation methods, i.e., principal component analysis and random projection, are introduced into RoSVM. An empirical study on three hyperspectral data sets demonstrates that the proposed RoSVM ensemble method outperforms the single SVM and random subspace SVM. The impacts of the parameters on the overall accuracy of RoSVM (different training sets, ensemble sizes, and numbers of features in the subset) are also investigated in this paper.
机译:支持向量机(SVM)和多分类器系统(MCS)具有不同的原理,它们在分类高光谱遥感影像方面表现出出色的性能。为了进一步提高性能,我们提出了一种新颖的集成方法,即基于旋转的SVM(RoSVM),它将SVM和MCS结合在一起。 RoSVM的基本思想是使用随机特征选择和数据转换来生成不同的SVM分类结果,这可以同时提高整体的个体准确性和多样性。 RoSVM中引入了两种简单的数据转换方法,即主成分分析和随机投影。对三个高光谱数据集的经验研究表明,所提出的RoSVM集成方法优于单个SVM和随机子空间SVM。本文还研究了参数对RoSVM总体准确性(不同训练集,集合大小和子集中特征数量)的影响。

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