首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >An airborne lidar sampling strategy to model forest canopy height from Quickbird imagery and GEOBIA
【24h】

An airborne lidar sampling strategy to model forest canopy height from Quickbird imagery and GEOBIA

机译:一种机载激光雷达采样策略,可通过Quickbird影像和GEOBIA对森林冠层高度进行建模

获取原文
获取原文并翻译 | 示例
           

摘要

High-resolution digital canopy models derived from airborne lidar data have the ability to provide detailed information on the vertical structure of forests. However, compared to satellite data of similar spatial resolution and extent, the small footprint airborne lidar data required to produce such models remain expensive. In an effort to reduce these costs, the primary objective of this paper is to develop an airborne lidar sampling strategy to model full-scene forest canopy height from optical imagery, lidar transects and Geographic Object-Based Image Analysis (GEOBIA). To achieve this goal, this research focuses on (i) determining appropriate lidar transect features (i.e., location, direction and extent) from an optical scene, (ii) developing a mechanism to model forest canopy height for the full-scene based on a minimum number of lidar transects, and (iii) defining an optimal mean object size (MOS) to accurately model the canopy composition and height distribution. Results show that (i) the transect locations derived from our optimal lidar transect selection algorithm accurately capture the canopy height variability of the entire study area; (ii) our canopy height estimation models have similar performance in two lidar transect directions (i.e., north-south and west-east); (iii) a small lidar extent (17.6% of total size) can achieve similar canopy height estimation accuracies as those modeled from the full lidar scene; and (iv) different MOS can lead to distinctly different canopy height results. By comparing the best canopy height estimate with the full lidar canopy height data, we obtained average estimation errors of 6.0. m and 6.8. m for conifer and deciduous forests at the individual tree crown/small tree cluster level, and an area weighted combined error of 6.2. m, which is lower than the provincial forest inventory height class interval (i.e., ≈ 9.0 m).
机译:从机载激光雷达数据得出的高分辨率数字树冠模型能够提供有关森林垂直结构的详细信息。但是,与具有类似空间分辨率和范围的卫星数据相比,生成此类模型所需的小面积机载激光雷达数据仍然昂贵。为了降低这些成本,本文的主要目的是开发一种机载激光雷达采样策略,以从光学图像,激光雷达断面和基于地理对象的图像分析(GEOBIA)中建模全场景森林冠层高度。为实现这一目标,本研究着重于(i)从光学场景确定合适的激光雷达横断面特征(即位置,方向和范围),(ii)根据模型建立一种模型来对全场景的森林冠层高度进行建模最小数量的激光雷达样条线,以及(iii)定义最佳平均物体尺寸(MOS),以准确地模拟冠层组成和高度分布。结果表明:(i)从我们的最佳激光雷达样条选择算法得出的样条位置可以准确地捕获整个研究区域的冠层高度变化; (ii)我们的树冠高度估算模型在两个激光雷达断面方向(即南北向和西东向)上具有相似的性能; (iii)较小的激光雷达范围(占总尺寸的17.6%)可以实现与从整个激光雷达场景建模的相似的机盖高度估算精度; (iv)不同的MOS可以导致明显不同的冠层高度结果。通过将最佳树冠高度估计值与整个激光雷达树冠高度数据进行比较,我们得出6.0的平均估计误差。 m和6.8。针叶树和落叶林在单个树冠/小树丛级别的m,面积加权组合误差为6.2。 m,低于省级森林资源清查高度等级间隔(即≈9.0 m)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号