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A Feature-clustering-based Subspace Ensemble Method For Anomaly Detection In Hyperspectral Images

机译:基于特征聚类的子空间集合方法,用于高光谱图像中的异常检测

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摘要

Anomaly detection is one of the most important applications for hyperspectral images. In this paper, a new ensemble learning algorithm for anomaly detection in hyperspectral imagery is proposed, which integrates feature grouping and anomalous signal subspace estimation. Main contribution of the proposed algorithm consists in two aspects. First, feature grouping in original hyperspectral images are firstly performed to form feature subsets with more diversity. In the subsets, conventional RX detector can better learn its model parameters. Second, an iterative orthogonal projection processing is given to estimate rare signal subspace for anomalous targets in each feature subset so as to more effectively remove background clutters. Finally, the RX detection is carried out with the estimated signal subspace in the subsets, and the detection results are combined by majority voting. Numerical experiments are conducted on real hyperspectral images and the experimental results show that the proposed algorithm outperforms several existing algorithms.
机译:异常检测是对高光谱图像中最重要的应用之一。在本文中,在高光谱图像异常检测新的集成学习算法,它集成了功能分组和异常的信号子空间估计。该算法的主要贡献在于两个方面。首先,功能在原来的高光谱图像分组首先用更具多样性进行形式特征子集。在子集,传统的RX探测器可以更好地了解它的模型参数。第二,给定迭代正交投影处理中的每个的特征子集来估计罕见信号子空间为异常的目标,以便更有效地去除背景杂波。最后,RX检测与所述子集中的所估计的信号子空间中进行,并且该检测结果通过多数表决组合。数值实验真实高光谱图像进行,实验结果表明,该算法优于现有的几种算法。

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