图像拼接
点云
算法
比例(比率)
参数统计
计算机科学
控制点
花键(机械)
点(几何)
数据点
曲线拟合
人工智能
数学
工程类
几何学
机器学习
量子力学
结构工程
统计
物理
作者
Jian Wang,Sheng Bi,W. B. Liu,Liping Zhou,Tukun Li,Iain Macleod,Richard Leach
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2023-12-14
卷期号:23 (24): 9816-9816
被引量:3
摘要
Parametric splines are popular tools for precision optical metrology of complex freeform surfaces. However, as a promising topologically unconstrained solution, existing T-spline fitting techniques, such as improved global fitting, local fitting, and split-connect algorithms, still suffer the problems of low computational efficiency, especially in the case of large data scales and high accuracy requirements. This paper proposes a speed-improved algorithm for fast, large-scale freeform point cloud fitting by stitching locally fitted T-splines through three steps of localized operations. Experiments show that the proposed algorithm produces a three-to-eightfold efficiency improvement from the global and local fitting algorithms, and a two-to-fourfold improvement from the latest split-connect algorithm, in high-accuracy and large-scale fitting scenarios. A classical Lena image study showed that the algorithm is at least twice as fast as the split-connect algorithm using fewer than 80% control points of the latter.
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