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Statistical Quality Assessment Criteria for a Linear Mixing Model with Elliptical t-Distribution Errors

机译:具有椭圆t分布误差的线性混合模型的统计质量评估准则

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摘要

The linear mixing model is widely used in hyperspectral imaging applications to model the reflectance spectra of mixed pixels. In both cases it is important to detect the presence of materials or gases and then estimate their amount, if they are present. The detection and estimation algorithms available for these tasks are related but they are not identical. The objective of this paper is to theoretically investigate how the heavy tails observed in hyperspectral background data affect the quality of abundance estimates and how the F-test, used for endmember selection, is robust to the presence of heavy tails when the model fits the data.
机译:线性混合模型广泛用于高光谱成像应用中,以对混合像素的反射光谱进行建模。在这两种情况下,重要的是检测材料或气体的存在,然后估计它们的数量(如果存在)。可用于这些任务的检测和估计算法是相关的,但它们并不相同。本文的目的是从理论上研究在高光谱背景数据中观察到的重尾如何影响丰度估计的质量,以及用于最终成员选择的F检验如何在模型适合数据时对存在重尾的情况具有鲁棒性。

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