In multi-robot missions, relative position and attitude information between agents is valuable for a variety of tasks such as mapping, planning, and formation control. In this paper, the problem of estimating relative poses from a set of inter-agent range measurements is investigated. Specifically, it is shown that the estimation accuracy is highly dependent on the true relative poses themselves, which prompts the desire to find multi-agent formations that provide the best estimation performance. By direct maximization of Fischer information, it is shown in simulation and experiment that large improvements in estimation accuracy can be obtained by optimizing the formation geometry of a team of robots.
翻译:在多机器人飞行任务中,物剂之间的相对地位和态度信息对于诸如绘图、规划和编组控制等各种任务来说是有价值的。本文调查了一组试剂间射程测量得出的相对构成估计问题。具体地说,表明估计的准确性在很大程度上取决于真实的相对构成本身,这促使人们希望找到能够提供最佳估计性能的多剂编组。通过直接最大限度地利用Fischer信息,模拟和实验显示,通过优化一组机器人的形成几何方法,可以大大改进估计的准确性。