The increasing deployment of robots in co-working scenarios with humans has revealed complex safety and efficiency challenges in the computation robot behavior. Movement among humans is one of the most fundamental -- and yet critical -- problems in this frontier. While several approaches have addressed this problem from a purely navigational point of view, the absence of a unified paradigm for communicating with humans limits their ability to prevent deadlocks and compute feasible solutions. This paper presents a joint communication and motion planning framework that selects from an arbitrary input set of robot's communication signals while computing robot motion plans. It models a human co-worker's imperfect perception of these communications using a noisy sensor model and facilitates the specification of a variety of social/workplace compliance priorities with a flexible cost function. Theoretical results and simulator-based empirical evaluations show that our approach efficiently computes motion plans and communication strategies that reduce conflicts between agents and resolve potential deadlocks.
翻译:在与人类共同工作的情况下越来越多地部署机器人,揭示了计算机器人行为中复杂的安全和效率挑战。人类之间的移动是这一前沿最根本、但又至关重要的问题之一。虽然从纯粹的航行角度处理该问题的办法是几种方法,但缺乏与人类沟通的统一模式限制了他们防止僵局和计算可行解决办法的能力。本文件提出了一个联合通信和运动规划框架,从任意输入的机器人通信信号中挑选出一组机器人的通信信号,同时计算机器人运动计划。它用噪音传感器模型模拟了人类同事对这些通信的不完善看法,便于以灵活的成本功能对各种社会/工作场所合规优先事项进行规范。理论结果和模拟模拟经验评估表明,我们的方法有效地计算了减少代理人之间的冲突和解决潜在僵局的动作计划和通信战略。