Individual Tree Reconstruction Based on Circular Truncated Cones From Portable LiDAR Scanner Data

Xin Li;Xuan Zhou;Sheng Xu
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Abstract

The LiDAR scanning approach captures a large amount of tree point cloud information, including the accurate coordinate of points, local topology, and overall geometry. However, the complex tree structures, e.g., curvature and occlusion of branches, bring challenges to the 3-D tree reconstruction. In this letter, we propose an innovative solution for obtaining the complete skeletons of individual trees and 3-D structures for modeling using point clouds. First, we obtain individual trees from input street scene and segment tree into small successive pieces, with the centers of each piece serving as skeleton candidate points. Second, we conduct the interpolation based on the Euclidean distance and orientation yields the entire skeleton completely. Finally, a high-precision 3-D model of trees is constructed by cylindrically fitting the skeleton relying on the optimized circular truncated cones depending on the branch orientation and cylindrical curvature. Experiments on various trees demonstrate the high efficiency and effectiveness of our method. Our method achieves 98% accuracy and takes less than 1 min in the reconstruction. Compared with other methods, our method reduces the time by more than 95%.
基于便携式激光雷达数据的圆形截锥单树重建
激光雷达扫描方法捕获大量的树点云信息,包括点的精确坐标、局部拓扑和整体几何形状。然而,树形结构复杂,如树枝的曲率和遮挡等,给三维树形重建带来了挑战。在这封信中,我们提出了一个创新的解决方案,用于获取单个树木的完整骨架和三维结构,并使用点云进行建模。首先,我们从输入的街景中获得单独的树,并将树分割成连续的小块,每个小块的中心作为骨架候选点。其次,根据欧几里得距离和方向进行插值,得到完整的骨架。最后,根据树枝方向和柱面曲率,利用优化后的圆锥体对骨架进行圆柱拟合,构建高精度的树木三维模型。在不同树种上的实验证明了该方法的高效性和有效性。该方法的重建准确率达到98%,重建时间小于1 min。与其他方法相比,我们的方法缩短了95%以上的时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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