The performance of surface registration relies heavily on the metric used for the alignment error between the source and target shapes. Traditionally, such a metric is based on the point-to-point or point-to-plane distance from the points on the source surface to their closest points on the target surface, which is susceptible to failure due to instability of the closest-point correspondence. In this paper, we propose a novel metric based on the intersection points between the two shapes and a random straight line, which does not assume a specific correspondence. We verify the effectiveness of this metric by extensive experiments, including its direct optimization for a single registration problem as well as unsupervised learning for a set of registration problems. The results demonstrate that the algorithms utilizing our proposed metric outperforms the state-of-the-art optimization-based and unsupervised learning-based methods.
翻译:表面注册的性能在很大程度上依赖于用于源与目标形状之间校正误差的测量标准。 传统上,这种测量标准以源表面各点到目标表面各点之间的点到点到点到点距离为基准表面最近点为基础,由于最接近点通信的不稳定而容易发生故障。 在本文中,我们提出了一个基于两个形状之间交叉点和随机直线之间交叉点的新型测量标准,它不假定具体通信。 我们通过广泛的实验来核查这一测量标准的有效性,包括直接优化单一登记问题,以及对一系列登记问题进行不受监督的学习。 研究结果表明,使用我们提议的测量法的算法优于最先进、最优化和不受监督的学习法。