Swayze Neal C, Tinkham Wade T
Department of Forest and Rangeland Stewardship, Colorado State University.
MethodsX. 2022 May 13;9:101729. doi: 10.1016/j.mex.2022.101729. eCollection 2022.
Monitoring of tree spatial arrangement is increasingly essential for restoration of dry conifer forests. The presented method was developed for high-density point clouds, like those from unmanned aerial system imagery, to extract and model individual tree location, height, and diameter at breast height (DBH). Extraction of tree locations and heights uses a variable window function searching point cloud-derived canopy height models. Tree DBH is extracted for a subset of point cloud trees using a slice at 1.32-1.42 m and a least-squares circle fitting algorithm. Extracted heights and DBHs are spatially matched and filtered against each tree's expected DBH predicted using a regional National Forest Inventory height to DBH relationship. Values remaining after filtering are used to create a site-specific height to DBH relationship for predicting missing DBH values. Applying the method in a ponderosa pine-dominated forest found that extracted height values exceeded the precision of field height measurement approaches, while the accuracy of extracted and modeled DBH values had a mean error of 0.79 cm.•Leveraging National Forest Inventory to filter DBH values eliminates the need for observations.•Produces tree list for all extractable stems in the point cloud.•Transferable to high-density point clouds in open-canopy forests.
监测树木的空间布局对于干旱针叶林的恢复愈发重要。本文提出的方法是针对高密度点云开发的,例如来自无人机系统影像的点云,用于提取并建模单株树木的位置、高度和胸径(DBH)。树木位置和高度的提取使用可变窗口函数搜索从点云得出的树冠高度模型。使用1.32 - 1.42米处的切片和最小二乘圆拟合算法,为点云树木的一个子集提取树木胸径。提取的高度和胸径在空间上进行匹配,并根据使用区域国家森林资源清查的高度与胸径关系预测的每棵树的预期胸径进行过滤。过滤后剩余的值用于创建特定地点的高度与胸径关系,以预测缺失的胸径值。在以黄松为主的森林中应用该方法发现,提取的高度值超过了实地高度测量方法的精度,而提取和建模的胸径值的准确度平均误差为0.79厘米。•利用国家森林资源清查来过滤胸径值无需进行观测。•生成点云中所有可提取树干的树木列表。•可转移到开阔树冠森林中的高密度点云。