基于冠层光谱不变量(CSI)概念的数据降维和波段选择

Dianzhong Wang, G. Sun, Shengli Wu, Y. Pang, Zhifeng Guo
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摘要

在本文中,我们利用车载平台PROBA(车载自治项目)上的多方向高光谱数据克里斯(紧凑型高分辨率成像光谱仪)进行了案例研究。经过正校正和大气校正后,我们对茂密针叶林的定向反射率(HDRF)进行了分析,得到了两个CSI,即不同角度下的再碰撞概率有效值pr和逃逸概率R1。将这两个不变量在所有5个角度上回归到与冠层高度相关的LVIS_H100数据中,结果与光谱反射率的回归具有相当的统计性。从这个意义上说,CSI方法可以作为一种有效的工具,将高光谱遥感数据按N/2 (N为光谱带数)的比例降维。重碰撞概率pr和逃逸概率R1可以理解为PCA中的两个主分量,但由于变换是基于辐射传递物理,还原结果有明确的解释,因此它们优于主分量。同样出于减少冗余的考虑,我们也计算了各光谱波段对pr和R1拟合值的偏差,并对所有采样像元进行统计。我们选择了最适合的波段,因为它们大部分位于近红外范围内,我们通过统计来确定哪些波段在可见光范围内需要补充,并讨论了这些波段在未来植被传感器设计中作为最佳近红外波段组合的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Dimension Reduction and Band Selection using Canopy Spectral Invariants (CSI) Concept
In this paper, we carried out a case study with a multidirectional and hyperspectral data, CHRIS (the Compact High Resolution Imaging Spectrometer) on board platform PROBA (Project for On Board Autonomy). After orthocorrection and atmospheric correction, we analyzed the directional reflectance (HDRF) of a dense conifer forest to get two CSI, i.e. effective value of re-collision probability, pr, and escape probability R1 at different angles. These two invariants at all five angles were regressed to LVIS_H100 data, which is relevant to canopy height, and demonstrated a comparable statistics to the regression with spectral reflectances. In this sense, CSI method can act as an effective tool to reduce the dimension of hyperspectral remote sensing data by a ratio of N/2 (N is the number of spectral bands). Re-collision probability, pr, and escape probability R1 can be understood as two principle components in PCA, however, they are superior to principle components because the transformation is based on radiation transfer physics and reduction result have explicit interpretation. In similar consideration to reduce the redundancy as above, we also calculated the deviation of each spectral band to the fitted value from pr and R1 and make a statistics for all the sampling pixels. We picked out the best fitted bands, as most of them locate in NIR range, we employed statistics to determine which to supplement in visible range, and discussed the potential of these bands to be selected as optimal VNIR bands combination of future vegetation sensor design.
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