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Adaptive Progressive Band Selection for Dimensionality Reduction in Hyperspectral Images

机译:高光谱图像维度减少的自适应渐变频段选择

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摘要

One of the challenging problems in processing high dimensional data, as hyperspectral images, with better spectral and temporal resolution is the computational complexity resulting from processing the huge amount of data volume. Various methods have been developed in the literature for dimensionality reduction, generally divided into two main techniques: data transformation techniques and features selection techniques. The feature selection technique is advantageous compared to transformation techniques in preserving the original data. However, deciding the appropriate number of features to be selected and choosing these features are very challenging since they require exhaustive researches. The progressive feature selection technique is a new concept recently introduced to address these issues based on priority criteria. However, this approach presents limits when these criteria are insufficient or depends on domain applications. In this paper, we present a new approach to improve the Progressive Feature Selection technique by adding new criteria that measure the amount of information present in each band. The endmembers extraction phase of the proposed approach includes both the N-FINDR and the ATGP algorithms. A case based reasoning system is used to choose the optimal criterion for the endmember extraction. The performances of this proposed approach were evaluated using AVIRIS hyperspectral image and the obtained results prove its effectiveness compared to other PBS techniques.
机译:处理高尺寸数据的一个具有挑战性的问题,作为高光谱图像,具有更好的光谱和时间分辨率是处理大量数据量的计算复杂度。在文献中已经开发了各种方法,用于减少维度,通常分为两种主要技术:数据变换技术和特征选择技术。与保留原始数据的变换技术相比,特征选择技术是有利的。然而,决定要选择的适当数量的功能,选择这些功能是非常具有挑战性,因为它们需要详尽的研究。渐进功能选择技术是最近引入的新概念,以根据优先标准解决这些问题。然而,当这些标准不足或取决于域应用程序时,这种方法呈现限制。在本文中,我们通过添加测量每个频带中存在的信息量的新标准来提高一种新的方法来改善渐进功能选择技术。所提出的方法的终端用及提取阶段包括N-FindR和ATGP算法。基于案例的推理系统用于选择EndMember提取的最佳标准。使用Aviris Hyperspectral图像评估该提出方法的性能,并且获得的结果与其他PBS技术相比证明了其有效性。

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