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Archetypal analysis for endmember bundle extraction considering spectral variability

机译:考虑光谱变异性的终点束提取的原型分析

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With the development of imaging technology, remote sensing images with a high spatial and spectral resolution have become available and have been used in various applications. Although many endmember extraction algorithms have been proposed for hyperspectral data sets which extract/select the standard endmember spectrum for each existing endmember class or scene component, there are still some problems in endmember extraction which lead to inaccurate unmixing. One of the important problems is that spectral variability is inevitable due to the different imaging conditions, especially in a hyperspectral image with a higher spatial resolution. In this article, to account for the spectral variability, an endmember bundle extraction algorithm based on archetypal analysis is proposed, and each material is represented with a few typical spectra. There are three steps in the proposed method of extracting endmember bundles: 1) Looking for pure pixels; 2) the first level archetypal analysis; and 3) the second level archetypal analysis. Experiments with both synthetic and real hyperspectral data sets indicate that, the proposed method could get a well unmixing result using the fewest typical spectra.
机译:随着成像技术的发展,以高空间和光谱分辨率遥感图像已经变得可用并且在各种应用中已经被使用。虽然许多端元提取算法已被提出用于高光谱数据集,其提取/选择为每个现有的端元类或场景组成的标准端元的频谱,还存在着在端元提取一些问题,导致不准确的解混。其中一个重要的问题之一是,频谱变化是不可避免的,由于不同的成像条件下,尤其是在高光谱图像具有更高的空间分辨率。在本文中,以说明的光谱变化的基础上,典型的分析中的端元束提取算法,并且每种材料都表示用几个典型光谱。有在端元提取束的所提出的方法的三个步骤:1)寻找纯像素; 2)所述第一电平原型数据;和3)所述第二级原型分析。与合成和真正的高光谱数据集上的实验表明,该方法可以用最少的典型谱得到很好的解混结果。

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