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Automatic detection of harvested trees and determination of forest growth using airborne laser scanning

机译:使用机载激光扫描自动检测采伐的树木并确定森林的生长

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This paper demonstrates the applicability of small footprint, high sampling density airborne laser scanners for boreal forest change detection, i.e. the estimation of forest growth and monitoring of harvested trees. Two laser acquisitions were carried out on a test site using a Toposys-1 laser scanner. Three-dimensional canopy height models were calculated for both data sets using raster-based algorithms. Object-oriented algorithms were developed for detecting harvested and fallen trees, and for measuring forest growth at plot and stand levels. Out of 83 field-checked harvested trees, 61 could be automatically and correctly detected. All mature harvested trees were detected; it was mainly the smaller trees that were not. Forest growth was demonstrated at plot and stand levels using an object-oriented tree-to-tree matching algorithm and statistical analysis. The precision of the estimated growth, based on field checking or statistical analysis, was about 5 cm at stand level and about 10-15 cm at plot level. The authors expect that the methods may be feasible in large area forest inventories that make use of permanent sample plots. Together with methods for detecting individual sample trees, the methods described may be used to replace a large number of permanent plots with laser scanning techniques.
机译:本文展示了小足迹,高采样密度的机载激光扫描仪在北方森林变化检测中的适用性,即森林生长的估计和伐木的监测。使用Toposys-1激光扫描仪在测试现场进行了两次激光采集。使用基于栅格的算法为这两个数据集计算了三维冠层高度模型。开发了面向对象的算法,用于检测砍伐的树木和倒下的树木,以及在样地和林分级别测量森林生长。在83棵经过实地检查的采伐树木中,有61棵可以被自动正确地检测到。检测到所有成熟的采伐树木;主要是没有的。使用面向对象的树对树匹配算法和统计分析,在样地和林分层次上证明了森林的生长。根据现场检查或统计分析,估计的生长精度在林分水平约为5厘米,在样地水平约为10-15厘米。作者期望这些方法在利用永久性样地的大面积森林清单中可能是可行的。与用于检测单个样本树的方法一起,所描述的方法可用于用激光扫描技术代替大量永久性地块。

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