Yuan Honglei, Li Guangyun, Wang Li, Li Xiangfei
Institute of Geospatial Information, Information Engineering University, Zhengzhou 450001, China.
Shanxi Institute of Surveying Mapping and Geoinformation, Taiyuan 030001, China.
Sensors (Basel). 2025 Aug 1;25(15):4748. doi: 10.3390/s25154748.
Over three decades of research has been undertaken on point cloud registration algorithms, resulting in mature theoretical frameworks and methodologies. However, among the numerous registration techniques used, the impact of point cloud scanning quality on registration outcomes has rarely been addressed. In most engineering and industrial measurement applications, the accuracy and density of LiDAR point clouds are highly dependent on laser scanners, leading to significant variability that critically affects registration quality. Key factors influencing point cloud accuracy include scanning distance, incidence angle, and the surface characteristics of the target. Notably, in short-range scanning scenarios, incidence angle emerges as the dominant error source. Building on this insight, this study systematically investigates the relationship between scanning incidence angles and point cloud quality. We propose an incident-angle-dependent weighting function for point cloud observations, and further develop an improved weighted Iterative Closest Point (ICP) registration algorithm. Experimental results demonstrate that the proposed method achieves approximately 30% higher registration accuracy compared to traditional ICP algorithms and a 10% improvement over Faro SCENE's proprietary solution.
三十多年来,人们一直在研究点云配准算法,形成了成熟的理论框架和方法。然而,在众多使用的配准技术中,点云扫描质量对配准结果的影响却很少得到探讨。在大多数工程和工业测量应用中,激光雷达点云的精度和密度高度依赖于激光扫描仪,导致显著的变异性,严重影响配准质量。影响点云精度的关键因素包括扫描距离、入射角和目标的表面特征。值得注意的是,在短程扫描场景中,入射角成为主要的误差源。基于这一见解,本研究系统地研究了扫描入射角与点云质量之间的关系。我们提出了一种基于入射角的点云观测加权函数,并进一步开发了一种改进的加权迭代最近点(ICP)配准算法。实验结果表明,与传统的ICP算法相比,该方法的配准精度提高了约30%,比法如(Faro)SCENE的专有解决方案提高了10%。