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A novel approach to hyperspectral band selection based on spectral shape similarity analysis and fast branch and bound search

机译:基于光谱形状相似度分析和快速分支定界搜索的高光谱谱带选择新方法

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摘要

With the development of hyperspectral remote sensing technology, the spectral resolution of the hyperspectral image data becomes denser, which results in large number of bands, high correlation between neighboring bands, and high data redundancy. It is necessary to reduce these bands before further analysis, such as land cover classification and target detection. Aiming at the classification task, this paper proposes an effective band selection method from the novel perspective of spectral shape similarity analysis with key points extraction and thus retains physical information of hyperspectral remote sensing images. The proposed approach takes all the bands of hyperspectral remote sensing images as time series. Firstly, spectral clustering is utilized to cluster all the training samples, which produces the prototypical spectral curves of each cluster. Then a set of initial candidate bands are obtained based on the extraction of key points from the processed hyperspectral curves, which preserve discriminative information and narrow down the candidate band subset for the following search procedure. Finally, filtering contiguous bands according to conditional mutual information and branch and bound search are further performed sequentially to gain the optimal band combination. To verify the effectiveness of the integrated band selection method put forward in this paper, classification employing the Support Vector Machine (SVM) classifier is performed on the selected spectral bands. The experimental results on two publicly available benchmark data sets demonstrate that the presented approach can select those bands with discriminative information, usually about 10 out of 200 original bands. Compared with previous studies, the newly proposed method is competitive with far fewer bands selected and a lower computational complexity, while the classification accuracy remains comparable.
机译:随着高光谱遥感技术的发展,高光谱图像数据的光谱分辨率变得越来越稠密,这导致了频带的大量,相邻频带之间的高相关性以及高数据冗余。在进行进一步分析(例如土地覆盖分类和目标检测)之前,有必要减小这些频段。针对分类任务,从光谱形状相似度分析和关键点提取的角度出发,提出了一种有效的波段选择方法,从而保留了高光谱遥感图像的物理信息。所提出的方法将高光谱遥感图像的所有波段作为时间序列。首先,利用光谱聚类对所有训练样本进行聚类,从而生成每个聚类的原型光谱曲线。然后,基于从已处理的高光谱曲线中提取关键点,获得一组初始候选波段,这些波段保留了判别信息并缩小了候选波段子集,以用于后续搜索过程。最后,根据条件互信息对相邻频带进行滤波,并进一步进行分支和边界搜索,以获得最佳频带组合。为了验证本文提出的综合频带选择方法的有效性,在选择的频带上使用支持向量机(SVM)分类器进行分类。在两个可公开获得的基准数据集上的实验结果表明,该方法可以选择具有区分性信息的频段,通常在200个原始频段中大约有10个。与以前的研究相比,新提出的方法具有竞争优势,所选择的频段少得多,计算复杂度低,而分类精度却保持可比性。

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