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Spatial-spectral preprocessing for volume-based endmember extraction algorithms using unsupervised clustering

机译:基于批量的终端补充算法的空间光谱预处理

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Spectral unmixing is an important task in hyperspectral data exploitation. This approach first identifies a collection of spectrally pure constituent spectra, called endmembers, and then expresses the measured spectrum of each mixed pixel as a combination of endmembers weighted by fractions or abundances that indicate the proportion of each endmember present in the pixel. Over the last decade, several algorithms have been developed for automatic extraction of spectral end-members using volume-based concepts. These algorithms use the spectral information contained in the data, and often neglect the spatial information. In this paper, we develop a novel spatial-spectral preprocessing technique for volume-based endmember extraction algorithms intended to exploit spectral information more effectively by adequately incorporating spatial context. Our experimental results, conducted using a real hyperspectral data set collected by NASA's Airborne Visible Infra-Red Imaging Spectrometer (AVIRIS) over the Cuprite Mining district in Nevada, reveal that the proposed approach can successfully integrate the spatial and spectral information contained in the input hyperspectral data.
机译:光谱解密是高光谱数据剥削中的重要任务。该方法首先识别频谱纯成分光谱的集合,称为终端,然后将每个混合像素的测量光谱表达为由分数或丰度加权的终端或丰富的组合,该分数或大量指示在像素中存在的每个端部的比例。在过去十年中,已经开发了几种算法,用于使用基于卷的概念自动提取光谱端构件。这些算法使用数据中包含的光谱信息,并且通常忽略空间信息。在本文中,我们开发了一种新的空间谱预处理技术,用于基于批量的终点提取算法,旨在通过充分结合空间上下文更有效地利用光谱信息。我们的实验结果,使用NASA的空中可见红外线成像光谱仪(Aviris)收集的真正高光谱数据集进行了内华达州山顶矿区,揭示了所提出的方法可以成功集成输入高光谱中所含的空间和光谱信息数据。

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