Application of the normal compositional model to the analysis of hyperspectral imagery

D. Stein
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引用次数: 55

Abstract

Hyperspectral sensors have been deployed from airborne and spaceborne platforms to collect imaging spectrometry data for environmental, economic, and military applications including scene classification and material identification. A variety of models have been applied to hyperspectral imagery including the normal mixture (NMM), linear mixture (LMM), and subspace (SM) models, for purposes that include developing land cover classification maps, retrieving environmental parameters, detecting objects of interest, and predicting system performance. None of these models account for both subpixel mixing, i.e., multiple material types occupying the same pixel, and intra-class spectral variability. The stochastic mixture model and the normal compositional model (NCM) were defined to explicitly allow for these characteristics, and to bring second order statistical information to bear on compositional problems. In this paper, the normal compositional model is defined, methods of estimating the parameters are described, and applications that demonstrate its utility are presented.
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正常成分模型在高光谱图像分析中的应用
高光谱传感器已经部署在机载和星载平台上,用于收集环境、经济和军事应用的成像光谱数据,包括场景分类和材料识别。各种模型已经应用于高光谱图像,包括正常混合(NMM)、线性混合(LMM)和子空间(SM)模型,用于开发土地覆盖分类图、检索环境参数、检测感兴趣的对象和预测系统性能。这些模型都没有考虑亚像元混合,即多种材料类型占用相同的像元,以及类内光谱变化。定义了随机混合模型和正常组成模型(NCM)来明确考虑这些特征,并将二阶统计信息引入到组成问题中。本文定义了标准组合模型,描述了估计参数的方法,并给出了证明其实用性的应用。
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