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Identifiability of geometric models for linear unmixing at different spatial resolutions in hyperspectral unmixing

机译:在高光谱解密中不同空间分辨率线性解密的几何模型的可识别性

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Proposed and existing hyperspectral remote sensors, provide information about the scene of interest at resolutions ranging from few meters to few kilometers in terrestrial and space applications. Understanding the type of information extracted with image exploitation algorithms and how does it relates to actual spectra on the ground are important problems when we look into algorithms that perform unmixing of hyperspectral images for subpixel analysis. In this paper, we investigate how spatial resolution affects the capability of unmixing algorithms based on geometric models to extract information from a scene. We study the performance of the positive matrix factorization for unmixing of hyperspectral at different spatial resolutions and how does it compare with other approaches such as MaxD, and SMACC. Hyperspectral imagery collected using the AISA sensor at 1m and 4m are used for the experiments. The results obtained illustrate some of the effects that algorithms assumptions have on unmixing results.
机译:提出的和现有的高光谱偏远传感器,提供有关在陆地和空间应用中几公里的分辨率的兴趣场景的信息。了解与图像利用算法提取的信息的类型,它是如何涉及到实际的光谱在地面上的时候,我们看到执行的子像素分析光谱分离的高光谱图像算法的重要问题。在本文中,我们研究了空间分辨率如何基于几何模型来影响解密算法的能力,以从场景中提取信息。我们研究了在不同空间分辨率下解密超光线的正矩阵分解的性能,以及如何与MAXD等其他方法进行比较,以及SMACC。使用AISA传感器在1M和4M下收集的高光谱图像用于实验。获得的结果说明了算法假设对解密结果的一些影响。

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