带有自组织地图的预算主动感知多机器人路径规划

Graeme Best, J. Faigl, R. Fitch
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引用次数: 45

摘要

我们提出了一种自组织映射(SOM)算法,作为主动感知和数据收集任务的新多目标路径规划问题的解决方案。我们为一个多机器人团队优化路径,目的是最大限度地观察环境中的一组节点。通过访问由传感器模型定义的相关视点区域来观察所选节点。该问题的关键特征是视点区域是重叠的多边形连续区域,每个节点都有一个观察奖励,机器人受旅行预算的约束。SOM算法共同选择和分配节点给机器人,并找到合适的传感位置序列。该算法具有与机器人数量无关的多项式有界运行时间。我们论证了观察一组3D物体的主动感知任务的可行性。视点区域考虑感知范围和自遮挡,奖励以形状函数特征空间集合中的可判别性来衡量。仿真是在大型室外环境中使用真实机器人的三维点云数据集进行的。我们的研究结果表明,所提出的方法使多机器人能够对具有连续候选视点集和长期规划视野的预算主动感知任务进行规划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-robot path planning for budgeted active perception with self-organising maps
We propose a self-organising map (SOM) algorithm as a solution to a new multi-goal path planning problem for active perception and data collection tasks. We optimise paths for a multi-robot team that aims to maximally observe a set of nodes in the environment. The selected nodes are observed by visiting associated viewpoint regions defined by a sensor model. The key problem characteristics are that the viewpoint regions are overlapping polygonal continuous regions, each node has an observation reward, and the robots are constrained by travel budgets. The SOM algorithm jointly selects and allocates nodes to the robots and finds favourable sequences of sensing locations. The algorithm has polynomial-bounded runtime independent of the number of robots. We demonstrate feasibility for the active perception task of observing a set of 3D objects. The viewpoint regions consider sensing ranges and self-occlusions, and the rewards are measured as discriminability in the ensemble of shape functions feature space. Simulations were performed using a 3D point cloud dataset from a real robot in a large outdoor environment. Our results show the proposed methods enable multi-robot planning for budgeted active perception tasks with continuous sets of candidate viewpoints and long planning horizons.
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