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An Experimental Evaluation of Endmember Generation Algorithms

机译:端元生成算法的实验评估

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Hyperspectral imagery is a new class of image data which is mainly used in remote sensing. It is characterized by a wealth of spatial and spectral information that can be used to improve detection and estimation accuracy in chemical and biological standoff detection applications. Finding spectral endmembers is a very important task in hyperspectral data exploitation. Over the last decade, several algorithms have been proposed to find spectral endmembers in hyperspectral data. Existing algorithms may be categorized into two different classes: 1) endmember extraction algorithms (EEAs), designed to find pure (or purest available) pixels, and 2) endmember generation algorithms (EGAs), designed to find pure spectral signatures. Such a distinction between an EEA and an EGA has never been made before in the literature. In this paper, we explore the concept of endmember generation as opposed to that of endmember extraction by describing our experience with two EGAs: the optical real-time adaptative spectral identification system (ORASIS), which generates endmembers based on spectral criteria, and the automated morphological endmember extraction (AMEE), which generates endmembers based on spatial/spectral criteria. The performance of these two algoriths is compared to that achieved by two standard algorithms which can perform both as EEAs and EGAs, i.e., the pixel purity index (PPI) and the iterative error analysis (IEA). Both the PPI and IEA may also be used to generate new signatures from existing pixel vectors in the input data, as opposed to the ORASIS method, which generates new spectra using an minimum volume transform. A standard algorithm which behaves as an EEA, i.e., the N-FINDR, is also used in the comparison for demonstration purposes. Experimental results provide several intriguing findings that may help hyperspectral data analysts in selection of algorithms for specific applications.
机译:高光谱图像是一类新的图像数据,主要用于遥感领域。它的特点是拥有大量的空间和光谱信息,可用于提高化学和生物隔离检测应用中的检测和估计精度。在高光谱数据开发中,寻找光谱末端成员是非常重要的任务。在过去的十年中,已经提出了几种算法来寻找高光谱数据中的光谱末端成员。现有算法可分为两类:1)端成员提取算法(EEA),设计用于查找纯(或最纯的可用像素),以及2)端成员生成算法(EGA),用于查找纯光谱特征。 EEA和EGA之间的这种区分在文献中从未有过。在本文中,我们通过描述我们在两个EGA方面的经验,探索了端元生成相对于端元提取的概念:光学实时自适应光谱识别系统(ORASIS),它基于光谱标准生成端元,以及自动形态端元提取(AMEE),它根据空间/光谱标准生成端元。将这两种算法的性能与通过两种可以同时用作EEA和EGA的标准算法(即像素纯度指数(PPI)和迭代误差分析(IEA))实现的性能进行比较。与ORASIS方法相反,PPI和IEA都可以用于从输入数据中现有的像素矢量生成新签名,而ORASIS方法使用最小体积变换生成新光谱。出于演示目的,在比较中也使用了表现为EEA的标准算法,即N-FINDR。实验结果提供了一些有趣的发现,可以帮助高光谱数据分析人员选择特定应用的算法。

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