Spectral Optimization of Airborne Multispectral Camera for Land Cover Classification: Automatic Feature Selection and Spectral Band Clustering

A. L. Bris, N. Chehata, X. Briottet, N. Paparoditis
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Abstract

Hyperspectral imagery consists of hundreds of contiguous spectral bands. However, most of them are redundant. Thus a subset of well-chosen bands is generally sufficient for a specific problem, enabling to design adapted superspectral sensors dedicated to specific land cover classification. Related both to feature selection and extraction, spectral optimization identifies the most relevant band subset for specific applications, involving a band subset relevance score as well as a method to optimize it. This study first focuses on the choice of such relevance score. Several criteria are compared through both quantitative and qualitative analyses. To have a fair comparison, all tested criteria are compared to classic hyperspectral data sets using the same optimization heuristics: an incremental one to assess the impact of the number of selected bands and a stochastic one to obtain several possible good band subsets and to derive band importance measures out of intermediate good band subsets. Last, a specific approach is proposed to cope with the optimization of bandwidth. It consists in building a hierarchy of groups of adjacent bands, according to a score to decide which adjacent bands must be merged, before band selection is performed at the different levels of this hierarchy.
用于土地覆盖分类的机载多光谱相机光谱优化:自动特征选择和光谱带聚类
高光谱图像由数百个连续的光谱带组成。然而,他们中的大多数都是多余的。因此,精心选择的波段子集通常足以解决特定问题,从而能够设计适合特定土地覆盖分类的超光谱传感器。光谱优化与特征选择和提取相关,为特定应用确定最相关的波段子集,涉及波段子集相关性评分以及优化方法。本研究首先关注这种关联分数的选择。通过定量和定性分析比较了几种标准。为了进行公平的比较,使用相同的优化启发式方法将所有测试标准与经典高光谱数据集进行比较:增量方法用于评估所选波段数量的影响,随机方法用于获得几个可能的良好波段子集,并从中间良好波段子集中导出波段重要性度量。最后,提出了解决带宽优化问题的具体方法。它包括建立一个相邻频带组的层次结构,根据一个分数来决定哪些相邻频带必须合并,然后在该层次结构的不同级别上进行频带选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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