基于ICP和无损检测改进凸壳的三维点云粗配准

Mouna Attia, Y. Slama, L. Peyrodie, H. Cao, Farah Haddad
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引用次数: 3

摘要

非刚性配准是运动跟踪、模型检索和目标识别等许多应用的关键步骤。这些应用的精度高度依赖于在配准步骤中使用的初始位置。本文提出了一种新的凸壳辅助粗配准方法,该方法通过对投影点的两种算法进行改进。首先,该方法采用统计方法寻找代表每个点云的最佳平面;其次,将每个云的所有点投影到相应的平面上。然后,从两个投影点集中提取两个凸包并进行最优匹配。其次,通过最小化两个凸包的匹配点对之间的距离,鲁棒估计从参考点到模型的非刚性变换。最后,用两种方法对变换估计进行了细化。第一个是采用迭代最近点(ICP)对粗配准进行细化。第二部分采用正态分布变换(NDT)对粗配准进行细化。在几种云上进行的实验研究表明,在大多数情况下,ICP对粗配准的细化比NDT的细化效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3D Point Cloud Coarse Registration based on Convex Hull Refined by ICP and NDT
Non-rigid registration is a crucial step for many applications such as motion tracking, model retrieval, and object recognition. The accuracy of these applications is highly dependent on the initial position used in registration step. In this paper we propose a novel Convex Hull Aided Coarse Registration refined by two algorithms applied on projected points. Firstly, the proposed approach uses a statistical method to find the best plane that represents each point cloud. Secondly, all the points of each cloud are projected onto the corresponding planes. Then, two convex hulls are extracted from the two projected point sets and then matched optimally. Next, the non-rigid transformation from the reference to the model is robustly estimated through minimizing the distance between the matched point’s pairs of the two convex hulls. Finally, this transformation estimation is refined by two methods. The first one is the refinement of coarse registration by Iterative Closest Point (ICP). The second one consists of the refinement of coarse registration by the Normal Distribution Transform (NDT). An experimental study, carried out on several clouds, shows that the refinement of coarse registration with ICP gives, in the most cases, a better result than refinement with NDT.
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