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Optimal individual supervised hyperspectral band selection distinguishing savannah trees at leaf level

机译:最佳个体监督高光谱频段选择区分大草原树木叶级

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This paper uses simulated annealing and focus on the spectral angle mapper (SAM), to demonstrate how the separability of two mean spectra from different species can be increased by choosing the bands that maximize the metric. It is known that classification performance is enhanced when the differences in mean spectra for each endmember species are maximized. Comparison was made using the selected bands derived from the proposed method, to all bands in the electromagnetic spectrum (EMS), only the bands in the visible, near infrared and short wave infrared regions of the EMS and selected bands using stepwise discriminant analysis. The bands from the proposed method often indicates a better choice of band selection as viewed by the summary statistics for (a) the SAM measurements, (b) the correlations between bands and (c) the spectral information divergence (SID), for each pair of species; and the classification accuracy of SAM and SID.
机译:本文使用模拟退火并聚焦在光谱角映射器(SAM)上,以通过选择最大化度量最大化的频带来提高两种平均光谱的分离性。众所周知,当每个端部月度物种的平均光谱差异最大化时,增强了分类性能。使用从所提出的方法衍生的所选条带进行比较,到电磁频谱(EMS)中的所有条带,仅使用逐步判别分析的EMS和选择带的可见光,近红外和短波红外区域中的带。来自所提出的方法的频带通常表示由(a)SAM测量的摘要统计(b)频带和(c)之间的相关性的频谱信息发散(SID)的相关性的更好选择的频带选择。每对物种;以及SAM和SID的分类准确性。

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