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Endmember extraction analysis considering endmember variability

机译:考虑端构件变异性的端构件提取分析

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In recent years, several kinds of endmember extraction algorithms have been proposed from hyperspectral data set which extracts/selects one single standard endmember spectrum for each existing endmember class or scene component. In this article, endmember variability is considered to the mixture spectrum analysis by representing each endmember by a set or a bundle of spectra. Our method contains four steps in order to extract endmember bundles: (1) looking for homogeneous area; (2) threshold segmentation for candidate endmember set; (3) getting initial clustering center with hierarchical clustering; (4) getting endmember bundles and center spectra with mean-shift algorithm. Experiments with real hyperspectral data sets indicate that the proposed strategy has significantly improvement by considering endmember variability to the original hyperspectral data.
机译:近年来,已经从高光谱数据集中提出了几种端成员提取算法,该算法为每个现有的端成员类或场景分量提取/选择一个单一的标准端成员谱。在本文中,通过用一组或一组光谱表示每个末端成员,可以将末端成员的变异性考虑到混合光谱分析中。我们的方法包含四个步骤,以提取端构件束:(1)寻找均质区域; (2)候选终端成员集的阈值分割; (3)建立具有层次聚类的初始聚类中心; (4)利用均值漂移算法获得端元束和中心谱。实际高光谱数据集的实验表明,通过考虑端成员对原始高光谱数据的可变性,提出的策略有了显着改善。

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