Learning Autonomous Docking Operation of Fully Actuated Autonomous Surface Vessel from Expert data

Vijayakumar, Akash, A, Atmanand M, Somayajula, Abhilash

arXiv.org Artificial Intelligence 

This paper presents an approach for autonomous docking of a fully actuated autonomous surface vessel using expert demonstration data. We frame the docking problem as an imitation learning task and employ inverse reinforcement learning (IRL) to learn a reward function from expert trajectories. A two-stage neural network architecture is implemented to incorporate both environmental context from sensors and vehicle kinematics into the reward function. The learned reward is then used with a motion planner to generate docking trajectories. Experiments in simulation demonstrate the effectiveness of this approach in producing human-like docking behaviors across different environmental configurations.