高光谱图像的形态特征提取与光谱分解

A. Plaza, J. Plaza, A. Cristo
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引用次数: 3

摘要

高光谱图像处理是近年来遥感等应用领域中非常活跃的一个研究领域。尽管高光谱数据分析有很多先进的处理技术,但绝大多数技术都是将光谱信息与空间信息分开考虑的,因此这两类信息并没有同时处理。在本文中,我们描述了几种创新的空间/光谱技术用于高光谱图像处理。这项工作中描述的技术涵盖了高光谱图像处理的不同方面,如降维、特征提取和光谱分解。本文讨论的技术是基于数学形态学启发的概念,该理论为实现所需的空间和光谱信息集成提供了一个显着的框架。利用具有地面真值的标准高光谱数据集对所提出的技术进行了实验验证,并与高光谱成像文献中的传统方法进行了比较,结果表明,空间和光谱信息的整合可以显著改善同时进行的高光谱场景分析。
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Morphological feature extraction and spectral unmixing of hyperspectral images
Hyperspectral image processing has been a very active area in remote sensing and other application domains in recent years. Despite the availability of a wide range of advanced processing techniques for hyperspectral data analysis, a great majority of available techniques for this purpose are based on the consideration of spectral information separately from spatial information information, and thus the two types of information are not treated simultaneously. In this paper, we describe several innovative spatial/spectral techniques for hyperspectral image processing. The techniques described in this work cover different aspects of hyperspectral image processing such as dimensionality reduction, feature extraction, and spectral unmixing. The techniques addressed in this paper are based on concepts inspired by mathematical morphology, a theory that provides a remarkable framework to achieve the desired integration of spatial and spectral information. The proposed techniques are experimentally validated using standard hyperspectral data sets with ground-truth, and compared to traditional approaches in the hyperspectral imaging literature, revealing that the integration of spatial and spectral information can significantly improve the analysis of hyperspectral scenes when conducted in simultaneous fashion.
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