使用基于相互先验的完成网络实现低重叠点云注册

Yazhou Liu;Zhiyong Liu
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摘要

这项研究提出了一种新的完成方法,专门用于低重叠部分点云注册。基于待注册的候选局部点云属于同一目标的假设,所提出的基于互先验的完成(MPC)方法将这些候选局部点云作为彼此的完成参考,以扩展它们的重叠区域。在不依赖形状先验知识的情况下,MPC 可用于不同类型的点云,如物体、房间场景和街景。这种相互参照方法的主要挑战在于,没有空间对齐的局部云无法提供可靠的完成参照。在互信息最大化的基础上,开发了一种渐进式完成结构,以实现输入点云之间的姿态、特征表示和完成对齐。在公共数据集上的实验结果令人鼓舞。特别是在低重叠情况下,与最先进的(SOTA)模型相比,重叠区域的大小可增加约 15.0%,旋转和平移误差可分别减少 30.8% 和 57.7%。(代码见:https://*.*)。
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Low Overlapping Point Cloud Registration Using Mutual Prior Based Completion Network
This work presents a new completion method that specifically designed for low-overlapping partial point cloud registration. Based on the assumption that the candidate partial point clouds to be registered belong to the same target, the proposed mutual prior based completion (MPC) method uses these candidate partial point clouds as completion reference for each other to extend their overlapping regions. Without relying on shape prior knowledge, MPC can work for different types of point clouds, such as object, room scene, and street view. The main challenge of this mutual reference approach is that partial clouds without spatial alignment cannot provide a reliable completion reference. Based on the mutual information maximization, a progressive completion structure is developed to achieve pose, feature representation and completion alignment between input point clouds. Experiments on public datasets show encouraging results. Especially for the low-overlapping cases, compared with the state-of-the-art (SOTA) models, the size of overlapping regions can be increased by about 15.0%, and the rotation and translation error can be reduced by 30.8% and 57.7% respectively.
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