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Offline Reinforcement Learning for Visual Navigation

Authors :
Shah, Dhruv
Bhorkar, Arjun
Leen, Hrish
Kostrikov, Ilya
Rhinehart, Nick
Levine, Sergey
Publication Year :
2022

Abstract

Reinforcement learning can enable robots to navigate to distant goals while optimizing user-specified reward functions, including preferences for following lanes, staying on paved paths, or avoiding freshly mowed grass. However, online learning from trial-and-error for real-world robots is logistically challenging, and methods that instead can utilize existing datasets of robotic navigation data could be significantly more scalable and enable broader generalization. In this paper, we present ReViND, the first offline RL system for robotic navigation that can leverage previously collected data to optimize user-specified reward functions in the real-world. We evaluate our system for off-road navigation without any additional data collection or fine-tuning, and show that it can navigate to distant goals using only offline training from this dataset, and exhibit behaviors that qualitatively differ based on the user-specified reward function.<br />Comment: Project page https://sites.google.com/view/revind/home

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2212.08244
Document Type :
Working Paper