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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Estimating forest biomass using small footprint LiDAR data: An individual tree-based approach that incorporates training data
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Estimating forest biomass using small footprint LiDAR data: An individual tree-based approach that incorporates training data

机译:使用小尺寸LiDAR数据估算森林生物量:结合培训数据的基于树的单独方法

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摘要

A new individual tree-based algorithm for determining forest biomass using small footprint LiDAR data was developed and tested. This algorithm combines computer vision and optimization techniques to become the first training data-based algorithm specifically designed for processing forest LiDAR data. The computer vision portion of the algorithm uses generic properties of trees in small footprint LiDAR canopy height models (CHMs) to locate trees and find their crown boundaries and heights. The ways in which these generic properties are used for a specific scene and image type is dependent on 11 parameters, nine of which are set using training data and the Nelder-Mead simplex optimization procedure. Training data consist of small sections of the LiDAR data and corresponding ground data. After training, the biomass present in areas without ground measurements is determined by developing a regression equation between properties derived from the LiDAR data of the training stands and biomass, and then applying the equation to the new areas. A first test of this technique was performed using 25 plots (radius=15 m) in a loblolly pine plantation in central Virginia, USA (37.42N, 78.68W) that was not intensively managed, together with corresponding data from a LiDAR canopy height model (resolution=0.5 m). Results show correlations (r) between actual and predicted aboveground biomass ranging between 0.59 and 0.82, and RMSEs between 13.6 and 140.4 t/ha depending on the selection of training and testing plots, and the minimum diameter at breast height (7 or 10 cm) of trees included in the biomass estimate. Correlations between LiDAR-derived plot density estimates were low (0.22 ≤ r ≤ 0.56) but generally significant (at a 95% confidence level in most cases, based on a one tailed test), suggesting that the program is able to properly identify trees. Based on the results it is concluded that the validation of the first training data-based algorithm for determining forest biomass using small footprint LiDAR data was a success, and future refinement and testing are merited.
机译:开发并测试了一种新的基于树的新算法,该算法使用小足迹LiDAR数据确定森林生物量。该算法结合了计算机视觉和优化技术,成为第一个专门针对处理森林LiDAR数据而设计的基于训练数据的算法。该算法的计算机视觉部分使用小尺寸LiDAR冠层高度模型(CHM)中树木的一般属性来定位树木并找到其树冠边界和高度。这些通用属性用于特定场景和图像类型的方式取决于11个参数,其中9个是使用训练数据和Nelder-Mead单形优化程序设置的。训练数据由LiDAR数据和相应的地面数据的小部分组成。训练后,通过建立从训练台的LiDAR数据得出的特性与生物量之间的回归方程,然后将方程应用于新区域,来确定没有地面测量值的区域中存在的生物量。在美国弗吉尼亚州中部的火炬松人工林(37.42N,78.68W)中使用25个样地(半径= 15 m)进行了这项技术的首次测试,该土地未经严格管理,并提供了来自LiDAR冠层高度模型的相应数据(分辨率= 0.5 m)。结果显示,实际和预测的地面生物量之间的相关性(r)在0.59和0.82之间,RMSE在13.6和140.4 t / ha之间,这取决于训练和测试场地的选择,以及胸高最小直径(7或10 cm)生物量估算中包括的树木数量。 LiDAR得出的样地密度估计值之间的相关性很低(0.22≤r≤0.56),但通常很有意义(在大多数情况下,根据单尾测试,置信度为95%),表明该程序能够正确识别树木。根据结果​​得出的结论是,第一个基于训练数据的,使用小足迹LiDAR数据确定森林生物量的算法的验证是成功的,值得进一步完善和测试。

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