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Published July 2021 | Published + Accepted Version
Journal Article Open

SECANT: Self-Expert Cloning for Zero-Shot Generalization of Visual Policies

Abstract

Generalization has been a long-standing challenge for reinforcement learning (RL). Visual RL, in particular, can be easily distracted by irrelevant factors in high-dimensional observation space. In this work, we consider robust policy learning which targets zero-shot generalization to unseen visual environments with large distributional shift. We propose SECANT, a novel self-expert cloning technique that leverages image augmentation in two stages to *decouple* robust representation learning from policy optimization. Specifically, an expert policy is first trained by RL from scratch with weak augmentations. A student network then learns to mimic the expert policy by supervised learning with strong augmentations, making its representation more robust against visual variations compared to the expert. Extensive experiments demonstrate that SECANT significantly advances the state of the art in zero-shot generalization across 4 challenging domains. Our average reward improvements over prior SOTAs are: DeepMind Control (+26.5%), robotic manipulation (+337.8%), vision-based autonomous driving (+47.7%), and indoor object navigation (+15.8%). Code release and video are available at https://linxifan.github.io/secant-site/.

Additional Information

© 2021 by the author(s). We are extremely grateful to Chris Choy, Jean Kossaifi, Shikun Liu, Zhiyuan "Jerry" Lin, Josiah Wong, Huaizu Jiang, Guanya Shi, Jacob Austin, Ismail Elezi, Ajay Mandlekar, Fei Xia, Agrim Gupta, Shyamal Buch, and many other colleagues for their helpful feedback and insightful discussions.

Attached Files

Published - fan21c.pdf

Accepted Version - 2106.09678.pdf

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Additional details

Created:
August 20, 2023
Modified:
October 23, 2023