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Vision-Based Goal-Conditioned Policies for Underwater Navigation in the Presence of Obstacles
[article]
2020
arXiv
pre-print
We present Nav2Goal, a data-efficient and end-to-end learning method for goal-conditioned visual navigation. Our technique is used to train a navigation policy that enables a robot to navigate close to sparse geographic waypoints provided by a user without any prior map, all while avoiding obstacles and choosing paths that cover user-informed regions of interest. Our approach is based on recent advances in conditional imitation learning. General-purpose, safe and informative actions are
arXiv:2006.16235v1
fatcat:aci5bps24revjlq4qifwto4y2q