计算机科学
人工智能
树(集合论)
扫描仪
点云
胸径
森林资源清查
激光扫描
数据采集
遥感
计算机视觉
数学
光学
激光器
物理
环境科学
地质学
农林复合经营
数学分析
植物
森林经营
生物
操作系统
作者
David Kelbe,Jan van Aardt,Paul Romanczyk,Martin van Leeuwen,Kerry Cawse‐Nicholson
标识
DOI:10.1109/jstars.2015.2416001
摘要
Despite the active research, terrestrial laser scanning (TLS) has remained underutilized for forest structure assessment due to reliance of processing algorithms on high-resolution data, which may be costly and time-consuming to collect. Operational inventories, however, necessitate maximizing sample size while minimizing time and cost. The objective of this study was to assess the performance of a novel technique that enables stem reconstruction from low-resolution, single-scan TLS data in an effort to satisfy performance criteria against operational acquisition constraints. Instead of utilizing the curvature of the tree stem, e.g., by circle or cylinder fitting, we take advantage of the sensor-object geometry and reduce the dimensionality of the modeling to a series of one-dimensional (1-D) line fits. This allowed robust recovery of tree stem structure in a range of New England forest types, for tree stems which subtended at least an angular width of 15 mrad- the beam divergence of our system. Assessment was performed by projecting the three-dimensional (3-D) data onto two-dimensional (2-D) images and evaluating the per-point classification accuracies using manually digitized truth maps. Manual forest inventory measurements were also collected for each 20 × 20 m plot and compared to measurements derived automatically. Good retrievals of stem location (R 2 = 0.99, RMSE = 0.16 m) and diameter at breast height (DBH) (R 2 = 0.80, RMSE = 6.0 cm) were achieved. This study demonstrates that low-resolution sensors may be effective in providing data for operational forest inventories constrained by sample size, time, and cost.
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