Unsupervised Reinforcement Learning of Transferable Meta-Skills for Embodied Navigation

CVPR(2020)

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摘要
Visual navigation is a task of training an embodied agent by intelligently navigating to a target object (e.g., television) using only visual observations. A key challenge for current deep reinforcement learning models lies in the requirements for a large amount of training data. It is exceedingly expensive to construct sufficient 3D synthetic environments annotated with the target object information. In this paper, we focus on visual navigation in the low-resource setting, where we have only a few training environments annotated with object information. We propose a novel unsupervised reinforcement learning approach to learn transferable meta-skills (e.g., bypass obstacles, go straight) from unannotated environments without any supervisory signals. The agent can then fast adapt to visual navigation through learning a high-level master policy to combine these meta-skills, when the visual-navigation-specified reward is provided. Experimental results show that our method significantly outperforms the baseline by 53.34% relatively on SPL, and further qualitative analysis demonstrates that our method learns transferable motor primitives for visual navigation.
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关键词
SPL,embodied navigation,visual-navigation-specified reward,transferable meta-skills,novel unsupervised reinforcement learning approach,training environments,visual navigation,target object information,sufficient 3D synthetic environments,training data,current deep reinforcement learning models,visual observations,embodied agent
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