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首页> 外文期刊>Journal of Applied Remote Sensing >Comparison of stand characteristic parameters and biomass estimations from light detection and ranging and structure-from-motion point clouds
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Comparison of stand characteristic parameters and biomass estimations from light detection and ranging and structure-from-motion point clouds

机译:光检测和测距和结构从运动点云的展台特征参数和生物质估计的比较

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The accurate estimation and inversion of stand characteristic parameters and biomass is the premise for the evaluation of forest productivity, forest ecosystem carbon storage, and ecological forest service capacity. The horizontal accuracies of structure from motion (SfM) and light detection and ranging (LiDAR) point clouds were identical, whereas the descriptions of the upper canopy indices were similar (R = 0.91 to 0.93). However, the descriptions of the lower canopy indices and vertical structure variables were different based on comparisons of the two point cloud types in the same region. Variables that described the vertical structure of the canopy in the SfM point clouds were much less important in the factor estimation models, exhibiting high correlations with basal area and volume. The factor estimation models with high correlations with tree height and diameter at breast height (DBH) exhibited similar importance for LiDAR variables. LiDAR (R-2 = 0.515 to 0.895) was superior to SfM (R-2 = 0.63 to 0.835) in estimating the same parameters, particularly those with high correlations with vertical structures. The combination of unmanned aerial vehicle aerial photogrammetry and LiDAR technology might enable the estimation of stand characteristic parameters and the inversion of biomass, as well as the estimation of characteristic parameters such as Lorey's H and DBH, which are highly sensitive for large datasets. The LiDAR and SfM model outcomes were comparable. We found that the model outcomes exhibited the greatest differences for volume (Delta rRMSE% = 13.94%) and the lowest for average DBH (Delta rRMSE = 0.8%) (C) 2020 Society of Photo Optical Instrumentation Engineers (SPIE)
机译:支架特征参数和生物质的准确估计和反演是评估森林生产力,森林生态系统碳储存和生态林业服务能力的前提。来自运动(SFM)和光检测和测距(LIDAR)点云的结构的水平精度是相同的,而上层冠层指数的描述相似(r = 0.91至0.93)。然而,基于同一区域中的两点云类型的比较,下层旁边指数和垂直结构变量的描述不同。描述了SFM点云中的顶篷垂直结构的变量在因子估计模型中的垂直结构非常重要,与基础区域和体积的高相关性。具有高相关性与树高和乳房高度(DBH)相关性的因子估计模型表现出对激光雷达变量的重要性。 LIDAR(R-2 = 0.515至0.895)在估计相同的参数时优于SFM(R-2 = 0.63至0.835),特别是与垂直结构高相关的参数。无人驾驶飞行器空中摄影测量和激光雷达技术的组合可以估计支架特征参数和生物质的反转,以及诸如叶片的H和DBH等特征参数的估计,这对于大型数据集是高度敏感的。 LIDAR和SFM模型结果是可比的。我们发现模型结果表现出最大的体积(Delta RRMSE%= 13.94%)和平均DBH的最低(Delta RRMSE = 0.8%)(C)2020照片光学仪表工程师(SPIE)

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