A review of road 3D modeling based on light detection and ranging point clouds

IF 8.6
Bin Yu, Yuchen Wang, Qihang Chen, Xiaoyang Chen, Yuqin Zhang, Kaiyue Luan, Xiaole Ren
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引用次数: 0

Abstract

Increasing development of accurate and efficient road three-dimensional (3D) modeling presents great opportunities to improve the data exchange and integration of building information modeling (BIM) models. 3D modeling of road scenes is crucial for reference in asset management, construction, and maintenance. Light detection and ranging (LiDAR) technology is increasingly employed to generate high-quality point clouds for road inventory. In this paper, we specifically investigate the use of LiDAR data for road 3D modeling. The purpose of this review is to provide references about the existing work on the road 3D modeling based on LiDAR point clouds, critically discuss them, and provide challenges for further study. Besides, we introduce modeling standards for roads and discuss the components, types, and distinctions of various LiDAR measurement systems. Then, we review state-of-the-art methods and provide a detailed examination of road segmentation and feature extraction. Furthermore, we systematically introduce point cloud-based 3D modeling methods, namely, parametric modeling and surface reconstruction. Parameters and rules are used to define model components based on geometric and non-geometric information, whereas surface modeling is conducted through individual faces within its geometry. Finally, we discuss and summarize future research directions in this field. This review can assist researchers in enhancing existing approaches and developing new techniques for road modeling based on LiDAR point clouds.
基于光探测和测距点云的道路三维建模研究进展
准确、高效的道路三维(3D)建模技术的不断发展为改善建筑信息建模(BIM)模型的数据交换和集成提供了巨大的机会。道路场景的3D建模对于资产管理、建设和维护至关重要。光探测和测距(LiDAR)技术越来越多地用于生成高质量的点云,用于道路清单。在本文中,我们专门研究了激光雷达数据在道路3D建模中的使用。本文旨在对现有的基于LiDAR点云的道路三维建模工作提供参考,对其进行批判性的讨论,并为进一步的研究提出挑战。此外,我们还介绍了道路建模标准,并讨论了各种激光雷达测量系统的组成、类型和区别。然后,我们回顾了最先进的方法,并提供了详细的道路分割和特征提取的检查。系统介绍了基于点云的三维建模方法,即参数化建模和曲面重建。参数和规则用于基于几何和非几何信息定义模型组件,而表面建模则通过其几何中的单个面进行。最后,对该领域未来的研究方向进行了讨论和总结。本文综述有助于研究人员改进现有方法和开发基于激光雷达点云的道路建模新技术。
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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