用于建筑物高空激光雷达扫描的 3D 点云完成网络比较

M. Kulawiak
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引用次数: 0

摘要

高空激光雷达扫描可快速获取代表整个城市街区的大空间数据。遗憾的是,由于物体遮挡以及扫描角度和传感器分辨率的限制,这种方法获取的原始点云在很大程度上是不完整的,会对获取的结果产生负面影响。近年来,许多新的三维点云补全解决方案应运而生,并在各种物体上进行了测试;然而,这些方法在建筑物高空激光雷达点云中的应用尚未得到适当研究。在上述背景下,本文介绍了将几种最先进的点云补全网络应用于通过模拟机载激光扫描获取的各种建筑物外部的结果。此外,还将部分数据生成的输出点云与完整的地面实况点云进行了比较。测试结果表明,在 ShapeNet-55 数据集上训练的 SeedFormer 网络可提供良好的形状补全结果。
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Comparison of 3D Point Cloud Completion Networks for High Altitude Lidar Scans of Buildings
High altitude lidar scans allow for rapid acquisition of big spatial data representing entire city blocks. Unfortunately, the raw point clouds acquired by this method are largely incomplete due to object occlusions and restrictions in scanning angles and sensor resolution, which can negatively affect the obtained results. In recent years, many new solutions for 3D point cloud completion have been created and tested on various objects; however, the application of these methods to high-altitude lidar point clouds of buildings has not been properly investigated yet. In the above context, this paper presents the results of applying several state-of-the-art point cloud completion networks to various building exteriors acquired by simulated airborne laser scanning. Moreover, the output point clouds generated from partial data are compared with complete ground-truth point clouds. The performed tests show that the SeedFormer network trained on the ShapeNet-55 data set provides promising shape completion results.
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