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Automatic selection of informative samples for SVM-based classification of hyperspectral data using limited training sets

机译:使用有限的训练集为基于SVM的高光谱数据分类自动选择信息样本

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In this work, we focus on how to select the most highly informative samples for effectively training support vector machine (SVM) classifiers in remotely sensed hyperspectral data classification. This issue is investigated by comparing different unsupervised algorithms which account for the spectral purity of training samples in the process of selecting those samples for classification purposes. Sample sets obtained using these algorithms are used to train an SVM architecture implemented using different kernels, with the ultimate goal of exploring the suitability of the aforementioned algorithms to reduce the number of training samples required by these architectures in the context of hyperspectral image classification. Experimental results are provided using the full version of a hyperspectral data set collected by NASA's Airborne Visible Infra-Red Imaging Spectrometer (AVIRIS) over the Indian Pines region in Northwestern Indiana.
机译:在这项工作中,我们集中于如何选择信息量最大的样本,以有效地训练遥感高光谱数据分类中的支持向量机(SVM)分类器。通过比较不同的无监督算法来研究此问题,这些算法在选择用于分类目的的样本的过程中考虑了训练样本的光谱纯度。使用这些算法获得的样本集用于训练使用不同内核实现的SVM架构,最终目的是探索上述算法的适用性,以减少高光谱图像分类环境下这些架构所需的训练样本数量。使用NASA机载可见光红外成像光谱仪(AVIRIS)在印第安纳州西北部印度松树地区收集的高光谱数据集的完整版本,提供了实验结果。

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