Multi-robot Coordination with Agent-Server Architecture for Autonomous Navigation in Partially Unknown Environments

2020 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)(2020)

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摘要
In this work, we present a system architecture to enable autonomous navigation of multiple agents across user-selected global interest points in a partially unknown environment. The system is composed of a server and a team of agents, here small aircrafts. Leveraging this architecture, computation-ally demanding tasks, such as global dense mapping and global path planning can be outsourced to a potentially powerful central server, limiting the onboard computation for each agent to local pose estimation using Visual-Inertial Odometry (VIO) and local path planning for obstacle avoidance. By assigning priorities to the agents, we propose a hierarchical multi-robot global planning pipeline, which avoids collisions amongst the agents and computes their paths towards the respective goals. The resulting global paths are communicated to the agents and serve as reference input to the local planner running onboard each agent. In contrast to previous works, here we relax the common assumption of a previously mapped environment and perfect knowledge about the state, and we show the effectiveness of the proposed approach in photo-realistic simulations with up to four agents operating in an industrial environment.
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关键词
global dense mapping,global path planning,potentially powerful central server,onboard computation,local pose estimation,local path planning,obstacle avoidance,hierarchical multirobot global planning pipeline,mapped environment,industrial environment,multirobot coordination,agent-server architecture,autonomous navigation,partially unknown environment,system architecture,multiple agents,user-selected global interest points,computation-ally demanding tasks,visual-inertial odometry
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