Shi Yintao, Zhao Gang, Wang Maomei, Xu Yi, Zhu Dadong
School of Geomatics Science and Technology, Nanjing Tech University, Nanjing 211816, China.
Jiangsu Hydraulic Research Institute, Nanjing 210017, China.
Sensors (Basel). 2021 Nov 13;21(22):7546. doi: 10.3390/s21227546.
The sphere target played a vital role in terrestrial LiDAR applications, and solving its geometrical center based on point cloud was a widely concerned problem. In this study, we proposed a newly finite random search algorithm for sphere target fitting. Based on the point cloud data and the geometric characteristics of the sphere target, the algorithm realized the target sphere fitting from the perspective of probability and statistics with the help of parameter estimation. Firstly, an initial constraint space was constructed, and the initial center and radius were determined by finite random search. Then, the optimal spherical center and radius were determined gradually through continuous iterative optimization. We tested the algorithm with the simulated and realistic point cloud. Experimental results showed that the proposed algorithm could be effectively applied to all kinds of point cloud fitting. When the coverage rate was bigger than 30%, the fitting accuracy could reach within 0.01 mm for all kinds of point clouds. When the coverage rate was less than 20%, the fitting accuracy can reach ±1 mm, although it was reduced to a certain extent.
球形目标在地面激光雷达应用中起着至关重要的作用,基于点云求解其几何中心是一个广受关注的问题。在本研究中,我们提出了一种新的用于球形目标拟合的有限随机搜索算法。该算法基于点云数据和球形目标的几何特征,借助参数估计从概率统计的角度实现了目标球体的拟合。首先,构建初始约束空间,通过有限随机搜索确定初始中心和半径。然后,通过连续迭代优化逐步确定最优球心和半径。我们用模拟点云和实际点云对该算法进行了测试。实验结果表明,所提算法能有效应用于各类点云拟合。当覆盖率大于30%时,对于各类点云拟合精度可达0.01毫米以内。当覆盖率小于20%时,拟合精度虽有一定程度降低,但仍可达到±1毫米。