Improved Spectral Unmixing of Hyperspectral Images Using Spatially Homogeneous Endmembers

M. Zortea, A. Plaza
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引用次数: 10

Abstract

Hyperspectral imaging is a new technique in remote sensing which provides image data at hundreds of spectral wave-lengths, thus allowing a very detailed characterization of the surface of the Earth (from an airborne or satellite platform). One of the most important challenges in hyperspectral imaging is to find an adequate pool of pure signature spectra of the materials present in the scene. These pure signatures are then used to decompose the scene into a set of so-called abundance fractions by means of a spectral unmixing algorithm, thus allowing a detailed analysis of the scene with sub-pixel precision. Most techniques available in endmember extraction literature rely on exploiting the spectral properties of the data alone. As a result, the search for endmembers in a scene is often conducted by treating the data as a collection of spectral measurements with no spatial arrangement. In this paper, we propose a novel strategy to incorporate spatial information into the traditional spectral-based endmember search process. Specifically, we propose to estimate, for each pixel vector in the scene, a scalar value which is used to weight the importance of the spectral information associated to each pixel in terms of its spatial context. The proposed methodology, which favours the selection of highly representative endmembers located in spatially homogeneous areas, is shown in this work to significantly improve several spectral-based endmember extraction algorithms available in the literature.
利用空间均匀端元改进的高光谱图像解混
高光谱成像是遥感领域的一项新技术,它提供数百个光谱波长的图像数据,从而可以(从机载或卫星平台)非常详细地描述地球表面。高光谱成像中最重要的挑战之一是找到场景中存在的材料的足够的纯特征光谱池。然后使用这些纯签名将场景分解为一组所谓的丰度分数,通过光谱解混算法,从而允许以亚像素精度对场景进行详细分析。在端元提取文献中,大多数可用的技术都依赖于单独利用数据的光谱特性。因此,对场景中端元的搜索通常是通过将数据视为没有空间排列的光谱测量数据来进行的。在本文中,我们提出了一种新的策略,将空间信息融入传统的基于光谱的端元搜索过程中。具体来说,我们建议为场景中的每个像素向量估计一个标量值,该标量值用于加权与每个像素相关的光谱信息在其空间上下文中的重要性。所提出的方法有利于选择位于空间均匀区域的高度代表性的端元,在这项工作中显示,可以显着改善文献中几种基于光谱的端元提取算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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