基于点云的机器人在线路径规划

Robotic Online Path Planning on Point Cloud

IEEE Transactions on Cybernetics · 2015
被引 166
ABS 3

中文导读

针对轮式或履带机器人在2.5维环境中的导航问题,提出一种直接利用原始点云进行路径规划的方法,通过3D张量投票定义黎曼度量,在保证最小行驶距离的同时平滑机器人操控。

Abstract

This paper deals with the path-planning problem for mobile wheeled- or tracked-robot which drive in 2.5-D environments, where the traversable surface is usually considered as a 2-D-manifold embedded in a 3-D ambient space. Specially, we aim at solving the 2.5-D navigation problem using raw point cloud as input. The proposed method is independent of traditional surface parametrization or reconstruction methods, such as a meshing process, which generally has high-computational complexity. Instead, we utilize the output of 3-D tensor voting framework on the raw point clouds. The computation of tensor voting is accelerated by optimized implementation on graphics computation unit. Based on the tensor voting results, a novel local Riemannian metric is defined using the saliency components, which helps the modeling of the latent traversable surface. Using the proposed metric, we prove that the geodesic in the 3-D tensor space leads to rational path-planning results by experiments. Compared to traditional methods, the results reveal the advantages of the proposed method in terms of smoothing the robot maneuver while considering the minimum travel distance.

机器人路径规划点云处理计算机视觉数学优化