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Comparison of forest canopy height profiles in a mountainous region of Taiwan derived from airborne lidar and unmanned aerial vehicle imagery

机译:森林冠层高度概况在台湾山区源于机载激光器和无人空中车辆图像的山区

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摘要

Tree height is essential for assessing carbon budgets and biodiversity. One of the most commonly used assessment methods is a field survey. However, this approach is extremely challenging for obtaining highly accurate estimates in forests with tall and dense canopies. In this study, we utilized airborne remotely sensed mean canopy height (MCH) spatial coverage acquired by high-cost airborne light detection and ranging (lidar) and low-cost unmanned aerial vehicle (UAV) sensors to quantify the tree height for a 590-ha complex tropical forest in the mountainous region of central Taiwan. The performances of the acquisition techniques were evaluated by comparing the statistical relationships of MCH from lidar and MCH from UAV with the concurrently obtained field mean tree height measurement (MTH) at the plot (25 x 20 m) scale. In addition, we further analyzed the forest structural variables that may influence lidar and UAV MCHs by using a general linear model. The results showed that both MCHs derived from lidar and UAV accurately estimated MTH. MCH from UAV had a superior performance to that of a small model offset, and the slope of the model fit line was close to one, which was possibly due to the finer spatial resolution of the UAV imagery. MCH from lidar may be utilized to delineate the entire vertical profile of a forest stand, but MCH from UAV can only detect the upper half of the canopies. This is a result of instrument and data differences. General linear model statistics revealed that the maximum stand height and mean tree age may be the major forest stand structure determinants affecting MCH estimates, which might indicate that the airborne estimations of mean canopy height are mainly governed by large trees within a forest stand.
机译:树高度对于评估碳预算和生物多样性至关重要。最常用的评估方法之一是现场调查。然而,这种方法极具挑战性极具挑战性,在高度和茂密的檐篷中获得高度准确的估计。在这项研究中,我们利用了通过高成本空中光检测和测距(LIDAR)和低成本无人机(UAV)传感器获得的空气传播的遥感平均冠层高度(MCH)空间覆盖率,以量化590-的树高HA复杂的热带森林在台湾山区。通过将MCH与来自UAV的统计关系与绘图(25×20m)刻度的同时获得的场平均树高度测量(MTH)进行比较来自UAV的MCH和MCH的MCH和MCH的统计关系来评估采集技术的性能。此外,我们进一步分析了通过使用一般线性模型来影响LIDAR和UAV MCH的森林结构变量。结果表明,两种MCH源于LIDAR和UAV精确估计的MTH。来自UAV的MCH对小型偏移的较高性能,模型配合线的斜率接近一个,这可能是由于UAV图像的更精细的空间分辨率。来自LIDAR的MCH可用于描绘森林摊位的整个垂直轮廓,但是从UAV的MCH只能检测檐篷的上半部分。这是仪器和数据差异的结果。一般线性模型统计显示,最大立场高度和平均树龄可能是影响MCH估计的主要森林立场结构决定因素,这可能表明平均冠层高度的空气估计主要受森林架内的大树的管辖。

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