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Joint Anomaly Detection and Spectral Unmixing for Planetary Hyperspectral Images

机译:行星高光谱图像的联合异常检测和光谱分解

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摘要

Hyperspectral (HS) images are commonly used in the context of planetary exploration, particularly for the analysis of the composition of planets. As several instruments have been sent throughout the Solar System, a huge quantity of data is getting available for the research community. Among classical problems in the analysis of HS images, a crucial one is unsupervised nonlinear spectral unmixing, which aims at estimating the spectral signatures of elementary materials and determining their relative contribution at a subpixel level. While the unmixing problem is well studied for Earth observation, some of the traditional problems encountered with Earth images are somehow magnified in planetary exploration. Among them, large image sizes, strong nonlinearities in the mixing (often different from those found in the Earth images), and the presence of anomalies are usually impairing the unmixing algorithms. This paper presents a new method that scales favorably with the problem posed by this analysis. It performs an unsupervised unmixing jointly with anomaly-detection capacities and has a global linear complexity. Nonlinearities are handled by decomposing the HS data on an overcomplete set of spectra, combined with a specific sparse projection, which guarantees the interpretability of the analysis. A theoretical study is proposed on synthetic data sets, and results are presented over the challenging 4-Vesta asteroid data set.
机译:高光谱(HS)图像通常用于行星探测的背景下,尤其是用于行星组成的分析。由于已经在整个太阳系中发送了几种仪器,因此研究团体可以获得大量数据。在HS图像分析中的经典问题中,一个至关重要的问题是无监督的非线性光谱分解,其目的在于估计基本材料的光谱特征并确定其在子像素级别的相对贡献。虽然对于地球观测已经很好地研究了解混问题,但是在行星探索中,以某种方式放大了一些与地球影像有关的传统问题。其中,较大的图像尺寸,混合中的强非线性(通常不同于地球图像中发现的非线性)以及异常的存在通常会损害解混合算法。本文提出了一种新方法,可以很好地解决此分析提出的问题。它与异常检测能力一起执行无监督的分解,并且具有全局线性复杂性。非线性是通过将HS数据分解为一组不完全的光谱并结合特定的稀疏投影来处理的,从而保证了分析的可解释性。提出了关于合成数据集的理论研究,并在具有挑战性的4-Vesta小行星数据集上给出了结果。

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