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LiDAR Forest Inventory with Single-Tree, Double-, and Single-Phase Procedures

机译:具有单树,双阶段和单阶段过程的LiDAR森林清单

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Light Detection and Ranging (LiDAR) data at 0.5–2 m postings were used with double-sample, stratified procedures involving single-tree relationships in mixed, and single species stands to yield sampling errors ranging from±2.1% to±11.5%. LiDAR samples were selected with focal filter procedures and heights computed from interpolated canopy and DEM surfaces. Tree dbh and height data were obtained at various ratios of LiDAR, ground samples for DGPS located ground plots. Dbh-height and ground-LiDAR height models were used to predict dbh and compute Phase 2 estimates of basal area and volume. Phase 1 estimates were computed using the species probability distribution from ground plots in each strata. Phase 2 estimates were computed by randomly assigning LiDAR heights to species groups using a Monte Carlo simulation for each ground plot. There was no statistical difference between volume estimates from 0.5 m and 1 m LiDAR densities. Volume estimates from single-phase LiDAR procedures utilizing existing tree attributes and height bias relationships were obtained with sampling errors of 1.8% to 5.5%.
机译:将0.5-2?m的光检测和测距(LiDAR)数据与双样本,分层程序(涉及混合的单树关系)和单一物种的分层程序一起使用,其采样误差范围为±2.1%至±11.5%。选择LiDAR样本时要使用焦滤器程序,并根据插值的顶篷和DEM表面计算出高度。在不同比例的LiDAR,DGPS地面图样的地面样本下获得树dbh和高度数据。使用Dbh高度和地面LiDAR高度模型来预测dbh并计算基础面积和体积的第二阶段估计值。使用每个地层中地块的物种概率分布来计算第一阶段的估算值。通过对每个地面图进行蒙特卡洛模拟,将LiDAR高度随机分配给物种组,从而计算出第二阶段的估算值。 LiDAR密度在0.5μm和1μm之间的体积估计之间没有统计学差异。利用现有树属性和高度偏差关系从单相LiDAR程序获得的体积估算值的采样误差为1.8%至5.5%。

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