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Hyperspectral Imagery Transformations Using Real and Imaginary Features for Improved Classification

机译:利用实像和虚像特征进行高光谱图像转换以改善分类

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摘要

Several studies have reported that the use of derived spectral features, in addition to the original hyperspectral data, can facilitate the separation of similar classes. Linear and nonlinear transformations are employed to project data into mathematical spaces with the expectation that the decision surfaces separating similar classes become well defined. Therefore, the problem of discerning similar classes in expanded space becomes more tractable. Recent work presented by one of the authors discusses a dimension expansion technique based on generating real and imaginary complex features from the original hyperspectral signatures. A complex spectral angle mapper was employed to classify the data. In this paper, we extend this method to include other approaches that generate derivative-like and wavelet-based spectral features from the original data. These methods were tested with several supervised classification methods with two Hyperspectral Image (HIS) cubes.
机译:几项研究报告说,除了原始的高光谱数据外,使用派生的光谱特征还可以促进相似类别的分离。线性和非线性变换可用于将数据投影到数学空间中,以期望分隔相似类的决策面会得到很好的定义。因此,辨别扩展空间中相似类别的问题变得更容易解决。一位作者提出的最新工作讨论了一种基于原始高光谱特征生成真实和虚构复杂特征的维扩展技术。使用复杂的光谱角度映射器对数据进行分类。在本文中,我们将该方法扩展为包括其他方法,这些方法可以从原始数据中生成类似导数和基于小波的光谱特征。这些方法通过带有两个高光谱图像(HIS)多维数据集的几种监督分类方法进行了测试。

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