Continuous-time Gaussian Process Trajectory Generation for Multi-robot Formation via Probabilistic Inference

Published in This paper is accepted to IROS2021, 2021

Recommended citation: S. Guo, B. Liu, S. Zhang, J. Guo and C. Wang, "Continuous-time Gaussian Process Trajectory Generation for Multi-robot Formation via Probabilistic Inference," 2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS), 2021, pp. 9247-9253, doi: 10.1109/IROS51168.2021.9636573. https://ieeexplore.ieee.org/document/9636573

In this paper, we extend a famous motion planning approach GPMP2 to multi-robot cases, yielding a novel centralized trajectory generation method for the multi-robot formation. A sparse Gaussian Process model is employed to represent the continuous-time trajectories of all robots as a limited number of states, which improves computational efficiency due to the sparsity. We add constraints to guarantee collision avoidance between individuals as well as formation maintenance, then all constraints and kinematics are formulated on a factor graph. By introducing a global planner, our proposed method can generate trajectories efficiently for a team of robots which have to get through a width-varying area by adaptive formation change. Finally, we provide the implementation of an incremental replanning algorithm to demonstrate the online operation potential of our proposed framework.

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