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Using aerial canopy data from UAVs to measure the effects of neighbourhood competition on individual tree growth

机译:使用来自无人机的空中冠层数据来衡量邻里竞争对个人树的影响

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摘要

Unmanned aerial vehicles (UAVs) have opened new opportunities for measuring 3D canopy structure from aerial imagery. Image data collected with a UAV can be processed to generate detailed information on local canopy structure around an individual tree, which may be a useful proxy for the amount of competition that tree experiences from its neighbours. Structural indices of competition traditionally have been derived from ground-based plot data, and it is not clear whether aerial canopy data from a UAV are as effective as ground data for modelling the effects of competition on individual-tree growth. Here, we compare the relative performance of four ground-based competition indices derived from plot data, five canopy-based competition indices derived from UAV data, and one hybrid index that uses both data types, for predicting the radial growth of two northern tree species (white spruce, lodgepole pine). Ground-based and canopy-based competition indices were both represented among the top-performing models for each species, but no single index was unambiguously favoured over all others. Of the ten competition indices we considered, the mean canopy height within 15 m of a subject tree had the strongest performance across both species, including the best performance for lodgepole pine (R-2 = 0.29) and third-best performance for white spruce (R-2 = 0.42). Models with mean canopy height also revealed interactions between competition and soil moisture, with growth reductions from competition limited to dry sites for white spruce and to mesic sites for lodgepole pine. Although we did not identify a systematic advantage for either ground-based or canopy-based competition indices, indices that were centred on the subject tree tended to perform better than plot-based indices that were not. Overall, our comparison showed that canopy-based metrics such as mean canopy height can be at least as effective as traditional ground-based metrics for measuring the effects of local competition on tree growth. As a new research tool in forest ecology, UAVs thus offer a valuable approach for measuring neighbourhood crowding and its effects on the performance of individual trees.
机译:无人驾驶飞行器(无人机)已经开辟了从空中图像测量3D冠层结构的新机会。可以处理与UAV收集的图像数据,以在各个树周围生成关于局部天篷结构的详细信息,这可能是树的竞争量的有用代理。传统上竞争的结构指数来自基于地面的绘图数据,目前尚不清楚来自无人机的空中顶棚数据是否与用于建模竞争效果对个人树的影响的地面数据有效。在这里,我们比较来自绘图数据的四个基于地基竞争指数的相对性能,从绘图数据中导出的五个基于网络的竞争指数,以及使用两个数据类型的一个混合指数,用于预测两种北方树种的径向生长(白色云杉,小屋杉木)。基于地面和基于机的竞争指数都代表了每个物种的最佳模型中,但没有单一指数明确地对所有其他人毫不含糊地偏爱。在我们考虑的十个竞争指数中,在课程树中15米内的平均冠层高度在两个物种中具有最强的性能,包括Lodgepole Pine(R-2 = 0.29)的最佳性能,以及白色云杉的第三次最佳性能( R-2 = 0.42)。平均冠层高度的模型也揭示了竞争和土壤水分之间的相互作用,从竞争中减少了竞争限制了白色云杉的干燥场地,以及用于大豆松树的浅点。虽然我们没有确定基于地面或基于机科的竞争指数的系统优势,但是以拍摄对象树为中心的指数往往比没有基于绘图的指数更好。总体而言,我们的比较表明,基于树冠的度量,例如平均冠层高度,至少与传统的地面度量一样有效,以测量当地竞争对树增长的影响。作为森林生态学的一种新的研究工具,无人机可以为衡量邻里拥挤的有价值的方法及其对个体树木性能的影响。

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