方向(向量空间)
点云
计算机科学
点(几何)
几何学
数学
地理
计算机视觉
作者
G. S. Huang,Qing Fang,Zheng Zhang,Ligang Liu,Xiao‐Ming Fu
摘要
We propose a simple yet effective method to orient normals for point clouds. Central to our approach is a novel optimization objective function defined from global and local perspectives. Globally, we introduce a signed uncertainty function that distinguishes the inside and outside of the underlying surface. Moreover, benefiting from the statistics of our global term, we present a local orientation term instead of a global one. The optimization problem can be solved by the commonly used numerical optimization solver, such as L-BFGS. The capability and feasibility of our approach are demonstrated over various complex point clouds. We achieve higher practical robustness and normal quality than the state-of-the-art methods.
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