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Biodiversity Mapping in a Tropical West African Forest with Airborne Hyperspectral Data

机译:机载高光谱数据在西非热带森林中的生物多样性定位

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摘要

Tropical forests are major repositories of biodiversity, but are fast disappearing as land is converted to agriculture. Decision-makers need to know which of the remaining forests to prioritize for conservation, but the only spatial information on forest biodiversity has, until recently, come from a sparse network of ground-based plots. Here we explore whether airborne hyperspectral imagery can be used to predict the alpha diversity of upper canopy trees in a West African forest. The abundance of tree species were collected from 64 plots (each 1250 m2 in size) within a Sierra Leonean national park, and Shannon-Wiener biodiversity indices were calculated. An airborne spectrometer measured reflectances of 186 bands in the visible and near-infrared spectral range at 1 m2 resolution. The standard deviations of these reflectance values and their first-order derivatives were calculated for each plot from the c. 1250 pixels of hyperspectral information within them. Shannon-Wiener indices were then predicted from these plot-based reflectance statistics using a machine-learning algorithm (Random Forest). The regression model fitted the data well (pseudo-R2 = 84.9%), and we show that standard deviations of green-band reflectances and infra-red region derivatives had the strongest explanatory powers. Our work shows that airborne hyperspectral sensing can be very effective at mapping canopy tree diversity, because its high spatial resolution allows within-plot heterogeneity in reflectance to be characterized, making it an effective tool for monitoring forest biodiversity over large geographic scales.
机译:热带森林是生物多样性的主要来源,但随着土地转化为农业而迅速消失。决策者需要知道需要优先保护的其余森林,但是直到最近,有关森林生物多样性的唯一空间信息仍来自稀疏的地块网络。在这里,我们探索机载高光谱图像是否可用于预测西非森林中上层冠层树木的alpha多样性。从塞拉利昂国家公园内的64个样地(每个大小为1250 m 2 )中收集了丰富的树种,并计算了Shannon-Wiener生物多样性指数。机载光谱仪在1 m 2 分辨率下测量了可见光和近红外光谱范围内186个波段的反射率。这些反射率值及其一阶导数的标准偏差是根据c为每个图计算的。其中包含1250像素的高光谱信息。然后,使用机器学习算法(Random Forest)从这些基于图的反射统计数据中预测Shannon-Wiener指数。回归模型很好地拟合了数据(伪R 2 = 84.9%),并且我们表明,绿波段反射率和红外区域导数的标准偏差具有最强的解释力。我们的工作表明,机载高光谱遥感可以非常有效地绘制冠层树的多样性,因为它的高空间分辨率可以表征地块内反射率的异质性,从而使其成为在较大的地理范围内监测森林生物多样性的有效工具。

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