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Tree Stem Detection and Crown Delineation in a Structurally Diverse Deciduous Forest Combining Leaf-On and Leaf-Off UAV-SfM Data

Remote sensing(2023)SCI 2区SCI 3区

German Aerosp Ctr | Friedrich Schiller Univ Jena | Department of Spatial Structures and Digitization of Forests | Georg August Univ Gottingen

Cited 3|Views16
Abstract
Accurate detection and delineation of individual trees and their crowns in dense forest environments are essential for forest management and ecological applications. This study explores the potential of combining leaf-off and leaf-on structure from motion (SfM) data products from unoccupied aerial vehicles (UAVs) equipped with RGB cameras. The main objective was to develop a reliable method for precise tree stem detection and crown delineation in dense deciduous forests, demonstrated at a structurally diverse old-growth forest in the Hainich National Park, Germany. Stem positions were extracted from the leaf-off point cloud by a clustering algorithm. The accuracy of the derived stem co-ordinates and the overall UAV-SfM point cloud were assessed separately, considering different tree types. Extracted tree stems were used as markers for individual tree crown delineation (ITCD) through a region growing algorithm on the leaf-on data. Stem positioning showed high precision values (0.867). Including leaf-off stem positions enhanced the crown delineation, but crown delineations in dense forest canopies remain challenging. Both the number of stems and crowns were underestimated, suggesting that the number of overstory trees in dense forests tends to be higher than commonly estimated in remote sensing approaches. In general, UAV-SfM point clouds prove to be a cost-effective and accurate alternative to LiDAR data for tree stem detection. The combined datasets provide valuable insights into forest structure, enabling a more comprehensive understanding of the canopy, stems, and forest floor, thus facilitating more reliable forest parameter extraction.
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Key words
unoccupied aerial vehicle (UAV),RGB,structure from motion (SfM),individual tree crown delineation (ITCD),stem detection,tree position,point cloud,leaf-off,leaf-on,deciduous forest
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要点】:本研究提出了一种结合叶落和叶生期无人机结构从运动(UAV-SfM)数据的方法,实现了对密集阔叶林中单棵树木茎部检测和树冠勾绘的高精度技术,揭示了无人机数据在森林管理及生态应用中的潜力。

方法】:通过聚类算法从叶落期点云中提取茎部位置,并使用区域生长算法在叶生期数据上根据提取的树茎进行个体树冠勾绘。

实验】:在德国海尼希国家公园的一个结构多样的老生长林中开展实验,使用 leaf-off 和 leaf-on 的UAV-SfM数据,结果表明茎部定位精确度较高(0.867),结合叶落期茎部位置提高了树冠勾绘的精确度,尽管在密集树冠中仍然具有挑战性。实验使用的数据集未明确提及名称,但通过UAV-SfM技术得到的点云数据进行了评估。