Coarse‐to‐fine adjustment for multi‐platform point cloud fusion

Xin Zhao, Jianping Li, Yuhao Li, Bisheng Yang, Sihan Sun, Yongfeng Lin, Zhen Dong
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Abstract

Leveraging multi‐platform laser scanning systems offers a complete solution for 3D modelling of large‐scale urban scenes. However, the spatial inconsistency of point clouds collected by heterogeneous platforms with different viewpoints presents challenges in achieving seamless fusion. To tackle this challenge, this paper proposes a coarse‐to‐fine adjustment for multi‐platform point cloud fusion. First, in the preprocessing stage, the bounding box of each point cloud block is employed to identify potential constraint association. Second, the proposed local optimisation facilitates preliminary pairwise alignment with these potential constraint relationships, and obtaining initial guess for a comprehensive global optimisation. At last, the proposed global optimisation incorporates all the local constraints for tightly coupled optimisation with raw point correspondences. We choose two study areas to conduct experiments. Study area 1 represents a fast road scene with a significant amount of vegetation, while study area 2 represents an urban scene with many buildings. Extensive experimental evaluations indicate the proposed method has increased the accuracy of study area 1 by 50.6% and the accuracy of study area 2 by 44.7%.
多平台点云融合的粗到细调整
利用多平台激光扫描系统可为大规模城市场景的三维建模提供完整的解决方案。然而,由不同视角的异构平台采集的点云在空间上的不一致性给实现无缝融合带来了挑战。为解决这一难题,本文提出了一种多平台点云融合的从粗到细调整方法。首先,在预处理阶段,利用每个点云块的边界框来识别潜在的约束关联。其次,建议的局部优化方法有助于与这些潜在的约束关系进行初步配对,并为全面的全局优化获得初始猜测。最后,建议的全局优化将所有局部约束与原始点对应关系紧密耦合在一起进行优化。我们选择了两个研究区域进行实验。研究区域 1 代表一个有大量植被的快速路场景,而研究区域 2 代表一个有许多建筑物的城市场景。广泛的实验评估表明,所提出的方法将研究区域 1 的精确度提高了 50.6%,将研究区域 2 的精确度提高了 44.7%。
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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