首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Detection and analysis of individual leaf-off tree crowns in small footprint, high sampling density lidar data from the eastern deciduous forest in North America
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Detection and analysis of individual leaf-off tree crowns in small footprint, high sampling density lidar data from the eastern deciduous forest in North America

机译:从北美东部落叶林的小足迹,高采样密度激光雷达数据中检测和分析单个落叶树冠

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Leaf-off individual trees in a deciduous forest in the eastern USA are detected and analysed in small footprint, high sampling density lidar data. The data were acquired February 1, 2001, using a SAAB TopEye laser profiling system, with a sampling density of approximately 12 returns per square meter. The sparse and complex configuration of the branches of the leaf-off forest provides sufficient returns to allow the detection of the trees as individual objects and to analyse their vertical structures. Initially, for the detection of the individual trees only, the lidar data are first inserted in a 21) digital image, with the height as the pixel value or brightness level. The empty pixels are interpolated, and height outliers are removed. Gaussian smoothing at different scales is performed to create a three-dimensional scale-space structure. Blob signatures based on second-order image derivatives are calculated, and then normalised so they can be compared at different scale-levels. The grey-level blobs with the strongest normalised signatures are selected within the scale-space structure. The support regions of the blobs are marked one-at-a-time in the segmentation result image with higher priority for stronger blobs. The segmentation results of six individual hectare plots are assessed by a computerised, objective method that makes use of a ground reference data set of the individual tree crowns. For analysis of individual trees, a subset of the original laser returns is selected within each tree crown region of the canopy reference map. Indices based on moments of the first four orders, maximum value and number of canopy and ground returns, are estimated. The indices are derived separately for height and laser reflectance of branches for the two echoes. Significant differences (p < 0.05) are detected for numerous indices for three major native species groups: oaks (Quercus spp.), red maple (Acer rubrum) and yellow poplar (Liriodendron tuliperifera). Tree species classification results of different indices suggest a moderate to high degree of accuracy using single or multiple variables. Furthermore, the maximum tree height is compared to ground reference tree height for 48 sample trees and a 1.1-m standard error (R-2 = 68% (adj.)) within the test-site is observed. (C) 2003 Elsevier Science Inc. All rights reserved. [References: 33]
机译:在美国东部的落叶森林中,通过小面积,高采样密度激光雷达数据检测并分析了落叶树木。数据是使用SAAB TopEye激光轮廓分析系统于2001年2月1日获得的,采样密度约为每平方米12个返回值。落叶林分支的稀疏和复杂配置提供了足够的回报,可以将树木检测为单个对象并分析其垂直结构。最初,仅用于检测单个树木,首先将激光雷达数据插入21)数字图像中,并以高度作为像素值或亮度级别。对空白像素进行插值,并删除高度异常值。执行不同比例的高斯平滑以创建三维比例空间结构。计算基于二阶图像导数的Blob签名,然后对其进行归一化,以便可以在不同的比例级别上对其进行比较。在比例空间结构中选择具有最强归一化签名的灰度级斑点。在分割结果图像中一次标记斑点的支持区域,优先级越高,斑点越强。通过计算机客观方法评估了六个单独公顷地块的分割结果,该方法利用了单个树冠的地面参考数据集。为了分析单个树木,在冠层参考图的每个树冠区域内选择原始激光回波的子集。根据前四个阶次的矩,顶篷的最大值和数量以及地面收益估算指数。分别针对两个回波的分支的高度和激光反射率分别导出指数。在三个主要的本地物种组的多个指数中检测到显着差异(p <0.05):橡树(Quercus spp。),红枫(Acer rubrum)和黄杨(Liriodendron tuliperifera)。不同指标的树种分类结果表明,使用单个或多个变量,其准确性为中等到高度。此外,将最大树高与48棵样本树的地面参考树高进行比较,并在测试地点内观察到1.1米的标准误差(R-2 = 68%(adj。))。 (C)2003 Elsevier Science Inc.保留所有权利。 [参考:33]

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