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A hybrid method for segmenting individual trees from airborne lidar data

机译:一种从机载激光雷达数据分割各个树木的混合方法

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Segmentation of individual trees from airborne lidar data uses either the point cloud directly or canopy height models (CHMs) derived from the point cloud. Point-based segmentation is able to detect understorey trees but is sensitive to the point density and often demands a high overhead cost of computing. Conversely, CHM-based segmentation can be easily implemented but it is impractical for the detection of understorey trees. To identify highly accurate treetops as well as understorey trees, this paper presents a hybrid method by modifying a CHM-based individual tree crown delineation (ITCD) algorithm and integrating it into a point-based algorithm. A multiscale local maxima (LM) algorithm is developed to improve the accuracy of LM obtained from CHMs in different spatial resolutions. The improved LM are used as seeds to segment the lidar point cloud into individual trees. For each tree, histogram analysis is applied to investigate the presence of understorey trees. Field measurements of tree heights and crown widths are used as ground truth to evaluate how well the proposed method is performing. The mean errors of tree heights and crown widths are 0.147 m and -0.004 m, respectively. The proposed method is also compared with five conventional methods of individual tree segmentation, namely ITCD, fixed window local maxima, Popescu and Wynne's local maxima, variable area local maxima, and Li's point-based segmentation. The comparison results indicate that the proposed hybrid method outperforms the conventional methods in terms of detection rate, omission error, commission error, mean absolute error of tree heights and root-mean-squared-error of tree heights.
机译:从空中激光雷达数据的各个树的分割使用点云直接或从点云派生的冠层高度模型(CHM)。基于点的分割能够检测到虚拟树木,但对点密度敏感,并且通常需要高度计算的高度成本。相反,可以容易地实现基于CHM的分割,但是检测虚拟树木是不切实际的。为了识别高度准确的树梢以及虚拟树木,本文通过修改基于CHM的单个树冠描绘(ITCD)算法并将其集成到基于点的算法中的混合方法。开发了多尺度本地最大值(LM)算法以提高不同空间分辨率中获得的LM的精度。改进的LM用作种子以将激光雷云分段为单独的树木。对于每棵树,应用直方图分析来调查虚拟树木的存在。树高度和冠宽的现场测量用作地面真理来评估所提出的方法的表现。树高度和冠宽的平均误差分别为0.147米和-0.004米。该方法也与五种传统方法的单个树分割,即ITCD,固定窗口局部最大值,Popescu和Wynne的本地最大值,可变区域局部最大值和Li的基于点的分割的传统方法进行了比较。比较结果表明,所提出的混合方法在检测速率,省略误差,委员会误差,树形高度的平均误差和树高的根均匀误差方面优于传统方法。

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