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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Vertical stratification of forest canopy for segmentation of understory trees within small-footprint airborne LiDAR point clouds
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Vertical stratification of forest canopy for segmentation of understory trees within small-footprint airborne LiDAR point clouds

机译:林冠层的垂直分层,用于在小尺寸机载LiDAR点云内分割林下树木

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Airborne LiDAR point cloud representing a forest contains 3D data, from which vertical stand structure even of understory layers can be derived. This paper presents a tree segmentation approach for multistory stands that stratifies the point cloud to canopy layers and segments individual tree crowns within each layer using a digital surface model based tree segmentation method. The novelty of the approach is the stratification procedure that separates the point cloud to an overstory and multiple understory tree canopy layers by analyzing vertical distributions of LiDAR points within overlapping locales. The procedure does not make a priori assumptions about the shape and size of the tree crowns and can, independent of the tree segmentation method, be utilized to vertically stratify tree crowns of forest canopies. We applied the proposed approach to the University of Kentucky Robinson Forest - a natural deciduous forest with complex and highly variable terrain and vegetation structure. The segmentation results showed that using the stratification procedure strongly improved detecting understory trees (from 46% to 68%) at the cost of introducing a fair number of over-segmented understory trees (increased from 1% to 16%), while barely affecting the overall segmentation quality of overstory trees. Results of vertical stratification of the canopy showed that the point density of understory canopy layers were suboptimal for performing a reasonable tree segmentation, suggesting that acquiring denser LiDAR point clouds would allow more improvements in segmenting understory trees. As shown by inspecting correlations of the results with forest structure, the segmentation approach is applicable to a variety of forest types. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:代表森林的机载LiDAR点云包含3D数据,从中可以导出甚至林下层的垂直林分结构。本文提出了一种用于多层林的树分割方法,该方法将点云分层为冠层,并使用基于数字表面模型的树分割方法对每一层内的单个树冠进行分割。该方法的新颖之处在于分层过程,该过程通过分析重叠区域内LiDAR点的垂直分布,将点云分离为一个上层和多个下层树冠层。该程序没有对树冠的形状和大小进行先验假设,并且可以独立于树分割方法而用于对森林冠层的树冠进行垂直分层。我们将建议的方法应用于肯塔基大学的鲁滨逊森林-一种天然落叶林,地形和植被结构复杂且变化很大。分割结果表明,使用分层程序可显着改善检测林下树木的比例(从46%增至68%),但以引入大量过度细分的林下树木(从1%增至16%)为代价,而几乎没有影响过度树的整体分割质量。林冠垂直分层的结果表明,林下冠层的点密度对于进行合理的树分割是次优的,这表明获取更密集的LiDAR点云将使林下树的分割有更多的改进。如检查结果与森林结构的相关性所示,分割方法适用于各种森林类型。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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