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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Forest species diversity mapping using airborne LiDAR and hyperspectral data in a subtropical forest in China
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Forest species diversity mapping using airborne LiDAR and hyperspectral data in a subtropical forest in China

机译:森林物种在中国亚热带森林中使用空气激光雷达和高光谱数据的多样性映射

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摘要

Monitoring biodiversity is essential for the conservation and management of forest resources. A method called "spectranomics" that maps the diversity of forest species based on species-driven leaf optical traits using imaging spectroscopy has been developed for tropical forests in earlier studies. In this study we applied the "spectranomics" method in combination with airborne hyperspectral (PHI-3 sensor with 1 m spatial resolution) and LiDAR ( 4 points/m(2)) data to first identify interspecies variations in biochemical and structural properties of trees and then estimate the tree species diversity within the Shennongjia Forest Nature Reserve in China. Firstly, we used the watershed algorithm based on morphological crown control to isolate individual tree crowns (ITCs) from the LiDAR data. For each ITC, we then calculated seven vegetation indices (VIs) representing key biochemical properties from the hyperspectral data and additionally derived the LiDAR-based tree height which was identified to support the discrimination of the tree species in a preceding analysis. Finally we utilized the combination of the seven selected VIs and tree height as input to a self-adaptive Fuzzy C-Means (FCM) clustering algorithm. The FCM algorithm was applied to fixed subsets of 30 m x 30 m and it was assumed that the number of clusters identified within a subset represents the number of occurring species. The species richness and Shannon-Wiener diversity index calculated from the clustering outputs correlated well with the field reference data (R-2 = 0.83, RMSE = 0.25). The results show that forest species diversity can be directly predicted using the suggested clustering method based on crown-by-crown variations in biochemical and structural properties in the examined subtropical forest without the need to distinguish the individual tree species.
机译:监测生物多样性对于森林资源的保护和管理至关重要。一种称为“光谱”的方法,即使用成像光谱基于物种驱动的叶光光学来映射森林物种的多样性,在早期研究中已经为热带森林开发了用于热带林。在这项研究中,我们将“Spectranomics”方法与空气传播的高光谱(PHI-3传感器有1​​米空间分辨率)和LIDAR(& 4点/ m(2))数据组合使用,以首先识别生化和结构性质的差异变化树木,然后估计中国神农鸡森林自然保护区的树种多样性。首先,我们利用了基于形态冠控制的流域算法,将各个树冠(ITCS)与LIDAR数据隔离。对于每个ITC,我们计算出七个植被指数(VI),其代表来自高光谱数据的关键生化特性,并且另外衍生出基于激光的树高,这被识别出支持前一个分析中的树种的判断。最后,我们利用了七种选择的VIS和树高的组合作为自适应模糊C型算法(FCM)聚类算法的输入。 FCM算法应用于30m×30μm的固定子集,并且假设在子集内识别的簇的数量表示发生的物种的数量。从聚类输出计算的物种丰富度和Shannon-Wiener分集指数与场参考数据(R-2 = 0.83,RMSE = 0.25)相关。结果表明,森林物种的多样性可以使用基于所检查的亚热森林中的生物化学和结构特性的冠状和结构特性的冠冠变异,无需区分各种树种的冠状物种的多样性。

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