高光谱图像数据的空间/光谱分析

Antonio Plaza, P. Martínez, J. Plaza, R. Pérez
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引用次数: 24

摘要

在高光谱图像数据分析中整合空间和光谱响应已被遥感界确定为一个理想的目标。然而,大多数可用的尝试都是将光谱信息与空间信息分开考虑,因此不能同时处理这两类信息。在本文中,我们描述了应用联合空间/光谱技术对高光谱图像数据进行全(纯)像元和混合像元分类的背景。本工作中描述的大多数技术都是基于经典的数学形态学理论,它为实现所需的集成提供了一个出色的框架。通过使用NASA/JPL-AVIRIS和DLR-DAIS 7915成像光谱仪收集的模拟和真实高光谱数据,将所提出的方法与其他知名的纯像素和混合像素分类器进行比较,证明了其性能。
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Spatial/Spectral analysis of hyperspectral image data
The integration of spatial and spectral responses in hyperspectral image data analysis has been identified as a desirable objective by the remote sensing community. However, most available attempts are based on the consideration of spectral information separately from spatial information, and thus the two types of information are not treated simultaneously. In this paper, we describe our background in applying joint spatial/spectral techniques for full (pure)- and mixed-pixel classification of hyperspectral image data. Most of the techniques described in this work are based on classic mathematical morphology theory, which provides a remarkable framework to achieve the desired integration. The performance of the proposed methodologies is demonstrated by comparing them to other well-known pure- and mixed-pixel classifiers, using both simulated and real hyperspectral data collected by the NASA/JPL-AVIRIS and DLR-DAIS 7915 imaging spectrometers.
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