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A Novel Ranking-Based Clustering Approach for Hyperspectral Band Selection

机译:一种基于排序的高光谱波段选择聚类新方法

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Through imaging the same spatial area by hyperspectral sensors at different spectral wavelengths simultaneously, the acquired hyperspectral imagery often contains hundreds of band images, which provide the possibility to accurately analyze and identify a ground object. However, due to the difficulty of obtaining sufficient labeled training samples in practice, the high number of spectral bands unavoidably leads to the problem of a “dimensionality disaster” (also called the Hughes phenomenon), and dimensionality reduction should be applied. Concerning band (or feature) selection, conventional methods choose the representative bands by ranking the bands with defined metrics (such as non-Gaussianity) or by formulating the band selection problem as a clustering procedure. Because of the different but complementary advantages of the two kinds of methods, it can be beneficial to use both methods together to accomplish the band selection task. Recently, a fast density-peak-based clustering (FDPC) algorithm has been proposed. Based on the computation of the local density and the intracluster distance of each point, the product of the two factors is sorted in decreasing order, and cluster centers are recognized as points with anomalously large values; hence, the FDPC algorithm can be considered a ranking-based clustering method. In this paper, the FDPC algorithm has been enhanced to make it suitable for hyperspectral band selection. First, the ranking score of each band is computed by weighting the normalized local density and the intracluster distance rather than equally taking them into account. Second, an exponential-based learning rule is employed to adjust the cutoff threshold for a different number of selected bands, where it is fixed in the FDPC. The proposed approach is thus named the enhanced FDPC (E-FDPC). Furthermore, an effective strategy, which is called the isolated-point-stopping criterion, is developed to automatically determine the appropriate- number of bands to be selected. That is, the clustering process will be stopped by the emergence of an isolated point (the only point in one cluster). Experimental results on three real hyperspectral data demonstrate that the bands selected by our E-FDPC approach could achieve higher classification accuracy than the FDPC and other state-of-the-art band selection techniques, whereas the isolated-point-stopping criterion is a reasonable way to determine the preferable number of bands to be selected.
机译:通过由高光谱传感器同时在不同光谱波长对同一空间区域进行成像,获取的高光谱图像通常包含数百个波段图像,这为准确分析和识别地面物体提供了可能。然而,由于在实践中难以获得足够的带标签的训练样本,高频谱带不可避免地导致了“维数灾难”(也称为休斯现象)的问题,因此应应用维数减少。关于频带(或特征)选择,常规方法通过用定义的度量(例如非高斯性)对频带排序或通过将频带选择问题表述为聚类过程来选择代表性频带。由于两种方法的优点不同,但同时使用这两种方法来完成频带选择任务可能是有益的。最近,已经提出了一种基于密度峰值的快速聚类算法。根据每个点的局部密度和簇内距离的计算,将两个因素的乘积按降序排序,并将聚类中心识别为值异常大的点;因此,FDPC算法可以被认为是基于排名的聚类方法。本文对FDPC算法进行了增强,使其适用于高光谱波段选择。首先,通过加权归一化的局部密度和簇内距离而不是同等地考虑它们来计算每个频带的等级得分。其次,采用基于指数的学习规则为不同数量的所选频段调整截止阈值,该阈值在FDPC中固定。因此,所提出的方法称为增强型FDPC(E-FDPC)。此外,开发了一种有效的策略(称为隔离点停止标准),以自动确定要选择的适当频带数。也就是说,将通过出现孤立点(一个集群中的唯一点)来停止集群过程。在三个真实高光谱数据上的实验结果表明,我们的E-FDPC方法选择的波段可以比FDPC和其他最新的波段选择技术实现更高的分类精度,而孤立点停止准则是合理的确定要选择的频带的最佳数量的方法。

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