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Estimating plot-level forest biophysical parameters using small-footprint airborne lidar measurements.

机译:使用小尺寸机载激光雷达测量估算地块级森林生物物理参数。

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摘要

The main study objective was to develop robust processing and analysis techniques to facilitate the use of small-footprint lidar data for estimating forest biophysical parameters measuring individual trees identifiable on the three-dimensional lidar surface. This study derived the digital terrain model from lidar data using an iterative slope-based algorithm and developed processing methods for directly measuring tree height, crown diameter, and stand density. The lidar system used for this study recorded up to four returns per pulse, with an average footprint of 0.65 m and an average distance between laser shots of 0.7 m. The lidar data set was acquired over deciduous, coniferous, and mixed stands of varying age classes and settings typical of the southeastern United States (37° 25' N, 78° 41' W). Lidar processing techniques for identifying and measuring individual trees included data fusion with multispectral optical data and local filtering with both square and circular windows of variable size. The window size was based on canopy height and forest type. The crown diameter was calculated as the average of two values measured along two perpendicular directions from the location of each tree top, by fitting a four-degree polynomial on both profiles. The ground-truth plot design followed the U.S. National Forest Inventory and Analysis (FIA) field data layout. The lidar-derived tree measurements were used with regression models and cross-validation to estimate plot level field inventory data, including volume, basal area, and biomass. FIA subplots of 0.017 ha each were pooled together in two categories, deciduous trees and pines. For the pine plots, lidar measurements explained 97% of the variance associated with the mean height of dominant trees. For deciduous plots, regression models explained 79% of the mean height variance for dominant trees. Results for estimating crown diameter were similar for both pines and deciduous trees, with R2 values of 0.62--0.63 for the dominant trees. R 2 values for estimating biomass were 0.82 for pines (RMSE 29 Mg/ha) and 0.32 for deciduous (RMSE 44 Mg/ha). Overall, plot level tree height and crown diameter calculated from individual tree lidar measurements were particularly important in contributing to model fit and prediction of forest volume and biomass.
机译:主要研究目标是开发强大的处理和分析技术,以促进使用小尺寸激光雷达数据估算森林生物物理参数,从而测量可在三维激光雷达表面识别的单个树木。这项研究使用基于迭代坡度的算法从激光雷达数据中得出了数字地形模型,并开发了直接测量树高,树冠直径和林分密度的处理方法。这项研究使用的激光雷达系统每个脉冲最多记录四个回波,平均足迹为0.65 m,激光发射之间的平均距离为0.7 m。激光雷达数据集是在美国东南部(37°25'N,78°41'W)典型的不同年龄级别和设置的落叶,针叶和混合林中采集的。用于识别和测量单个树木的激光雷达处理技术包括与多光谱光学数据融合的数据以及具有可变大小的正方形和圆形窗口的局部滤波。窗户的大小取决于树冠高度和森林类型。通过在两个轮廓上拟合四次多项式,将树冠直径计算为从每个树顶位置沿两个垂直方向测量的两个值的平均值。地面真相图设计遵循美国国家森林清单与分析(FIA)现场数据布局。激光雷达衍生的树木测量值与回归模型和交叉验证一起使用,以估计地块级别的田间库存数据,包括体积,基础面积和生物量。将0.017公顷的FIA子样地汇集在一起​​,分为两类:落叶树和松树。对于松树地块,激光雷达测量结果解释了与优势树平均高度相关的97%的方差。对于落叶地块,回归模型解释了优势树的平均高度方差的79%。松树和落叶树的树冠直径估算结果相似,优势树的R2值为0.62--0.63。估计生物量的R 2值,松树为0.82(RMSE 29 Mg / ha),落叶树为0.32(RMSE 44 Mg / ha)。总体而言,根据单个树激光雷达测量结果计算出的样地树高和树冠直径对于模型拟合以及森林体积和生物量的预测至关重要。

著录项

  • 作者

    Popescu, Sorin C.;

  • 作者单位

    Virginia Polytechnic Institute and State University.;

  • 授予单位 Virginia Polytechnic Institute and State University.;
  • 学科 Agriculture Forestry and Wildlife.; Environmental Sciences.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 森林生物学;环境科学基础理论;遥感技术;
  • 关键词

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