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Nonlinear Mapping Based on Spectral Angle Preserving Principle for Hyperspectral Image Analysis

机译:基于谱角保留原理的非线性映射高光谱图像分析

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The paper proposes three novel nonlinear dimensionality reduction methods for hyperspectral image analysis. The first two methods are based on the principle of preserving pairwise spectral angle mapper (SAM) measures for pixels in a hyperspectral image. The first method is derived in Cartesian coordinates, and the second one in hypersherical coordinates. The third method is based on the approximation of SAM measures by Euclidean distances. For the proposed methods, the paper provides both the theoretical background and fast numerical optimization algorithms based on the stochastic gradient descent technique. The experimental study of the proposed methods is conducted using publicly available hyperspectral images. The study compares the proposed nonlinear dimensionality reduction methods with the principal component analysis (PCA) technique that belongs to linear dimensionality reduction methods. The experimental results show that the proposed approaches provide higher classification accuracy compared to the linear technique when the nearest neighbor classifier using SAM measure is used for classification.
机译:本文提出了三种新颖的非线性降维方法用于高光谱图像分析。前两种方法基于保留高光谱图像中像素的成对光谱角度映射器(SAM)测量的原理。第一种方法是在笛卡尔坐标中导出的,第二种方法是在高斜坐标中导出的。第三种方法基于基于欧几里德距离的SAM量度近似值。对于所提出的方法,本文提供了基于随机梯度下降技术的理论背景和快速数值优化算法。建议的方法的实验研究是使用公开可用的高光谱图像进行的。该研究将提出的非线性降维方法与属于线性降维方法的主成分分析(PCA)技术进行了比较。实验结果表明,与使用SAM度量的最近邻分类器进行分类相比,与线性技术相比,该方法具有更高的分类精度。

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