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An introduction to spectral graph techniques for the analysis of hyperspectral image data

机译:光谱图技术介绍,用于高光谱图像数据分析

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Two of the biggest challenges in analyzing HyperSpectral Image (HSI) data are that, first, the data is very high-dimensional, and secondly, by its very nature, HSI contains both spatial and spectral information. In order to make full use of this information, models and algorithms should incorporate both aspects of the data; unfortunately, this is a decidedly non-trivial problem. In recent years, spectral graph theory (including manifold learning) has proven to be a very successful technique for analyzing high-dimensional data sets. Given the highly abstract nature of graphs, many of these techniques are easily applied to HSI data; moreover, by carefully choosing how the graph is constructed, both the spatial and spectral nature of the data can be included in the model. In this note, we present a general background overview of spectral graph theory, with an emphasis on how it can be used to analyze HSI data (in particular, to perform nonlinear dimensionality reduction as well as segmentation and classification). We include examples from real-world data, and also point out some of the issues (such as computational complexity and storage requirements) that need to be addressed.
机译:分析高光谱图像(HSI)数据时面临的两个最大挑战是,首先,数据具有很高的维数;其次,就其本质而言,HSI既包含空间信息又包含光谱信息。为了充分利用这些信息,模型和算法应将数据的两个方面都纳入其中。不幸的是,这绝对是不平凡的问题。近年来,频谱图理论(包括流形学习)已被证明是一种用于分析高维数据集的非常成功的技术。鉴于图形的高度抽象性,许多这些技术很容易应用于HSI数据。此外,通过仔细选择图形的构造方式,可以在模型中同时包含数据的空间和光谱性质。在本说明中,我们介绍了频谱图理论的一般背景概述,重点是如何将其用于分析HSI数据(尤其是执行非线性降维以及分段和分类)。我们提供了来自真实数据的示例,并指出了一些需要解决的问题(例如计算复杂性和存储要求)。

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