首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Small-footprint lidar estimation of sub-canopy elevation and tree height in a tropical rain forest landscape
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Small-footprint lidar estimation of sub-canopy elevation and tree height in a tropical rain forest landscape

机译:热带雨林景观中小冠层高度和树高的小足迹激光雷达估计

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摘要

Meso-scale digital terrain models (DTMs) and canopy-height estimates, or digital canopy models (DCMs), are two lidar products that have immense potential for research in tropical rain forest (TRF) ecology and management. In this study, we used a small-footprint lidar sensor (airborne laser scanner, ALS) to estimate sub-canopy elevation and canopy height in an evergreen tropical rain forest. A fully automated, local-minima algorithm was developed to separate lidar ground returns from overlying vegetation returns, We then assessed inverse distance weighted (IDW) and ordinary kriging (OK) geostatistical techniques for the interpolation of a sub-canopy DTM. OK was determined to be a superior interpolation scheme because it smoothed fine-scale variance created by spurious understory heights in the ground-point dataset. The final DTM had a linear correlation of 1.00 and a root-mean-square error (RMSE) of 2.29 m when compared against 3859 well-distributed ground-survey points. In old-growth forests, RMS error on steep slopes was 0.67 m greater than on flat slopes. On flatter slopes, variation in vegetation complexity associated with land use caused highly significant differences in DTM error distribution across the landscape, The highest DTM accuracy observed in this study was 0.58-m RMSE, under flat, open-canopy areas with relatively smooth surfaces. Lidar ground retrieval was complicated by dense, multi-layered evergreen canopy in old-growth forests, causing DTM overestimation that increased RMS error to 1.95 m. A DCM was calculated from the original lidar surface and the interpolated DTM. Individual and plot-scale heights were estimated from DCM metrics and compared to field data measured using similar spatial supports and metrics. For old-growth forest emergent trees and isolated pasture trees greater than 20 m tall, individual tree heights were underestimated and had 3.67- and 2.33-m mean absolute error (MAE), respectively, Linear-regression models explained 51% (4.15-m RMSE) and 95% (2.41-m RMSE) of the variance, respectively. It was determined that improved elevation and field-height estimation in pastures explained why individual pasture trees could be estimated more accurately than old-growth trees. Mean height of tree stems in 32 young agroforestry plantation plots (0.38 to 18.53 m tall) was estimated with a mean absolute error of 0.90 m (r{sup}2 = 0.97; 1.08-m model RMSE) using the mean of lidar returns in the plot. As in Other small-footprint lidar studies, plot mean height was underestimated; however, our plot-scale results have stronger linear models for tropical, leaf-on hardwood trees than has been previously reported for temperate-zone conifer and deciduous hardwoods.
机译:中尺度数字地形模型(DTM)和冠层高度估计或数字冠层模型(DCM)是两种激光雷达产品,在热带雨林(TRF)生态和管理研究方面具有巨大潜力。在这项研究中,我们使用了一个小型的激光雷达传感器(机载激光扫描仪,ALS)来估算常绿热带雨林中的子冠层高度和冠层高度。开发了一种全自动的局部极小值算法,以将激光雷达地面回波与上覆的植被回波分开。然后,我们评估了反距离加权(IDW)和普通克里格(OK)地统计技术,用于子遮盖DTM的插值。确定被确定为高级插值方案,是因为它可以平滑由地面点数据集中的虚假地下层高度产生的精细尺度方差。与3859个分布良好的地面测量点相比,最终的DTM具有1.00的线性相关性和2.29 m的均方根误差(RMSE)。在旧林中,陡坡的RMS误差比平坡的RMS误差大0.67 m。在更平坦的斜坡上,与土地利用相关的植被复杂性变化导致整个景观的DTM误差分布存在很大差异。在平坦,开放的,具有相对光滑表面的冠层区域,本研究中观察到的最高DTM精度为0.58-m RMSE。激光雷达的地面检索由于老龄林中茂密的多层常绿树冠而变得复杂,导致DTM高估,从而将RMS误差增加到1.95 m。从原始激光雷达表面和内插DTM计算DCM。根据DCM指标估算单个高度和地块比例的高度,并将其与使用类似空间支撑和指标测得的现场数据进行比较。对于年龄大于20 m的老龄森林出苗树和孤立的牧草树,单个树的高度被低估了,分别具有3.67-m和2.33-m的平均绝对误差(MAE),线性回归模型解释了51%(4.15-m RMSE)和方差的95%(2.41-m RMSE)。可以确定的是,牧场中海拔和田野高度的估计值得到了改善,这解释了为什么可以比老树更准确地估计单个牧场树。估计了32个年轻农林业用地(高0.38至18.53 m)中树茎的平均高度,使用激光雷达的平均回报,平均绝对误差为0.90 m(r {sup} 2 = 0.97; RMSE为1.08-m模型)。剧情。与其他小尺寸激光雷达研究一样,地块平均高度被低估了。但是,与以前报道的温带针叶树和落叶硬木相比,我们的样地尺度结果对热带,带叶硬木树具有更强的线性模型。

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