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ROLL: Visual Self-Supervised Reinforcement Learning with Object Reasoning

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arxiv 2011.06777 v1 pith:E7DZLZJ5 submitted 2020-11-13 cs.LG cs.RO

ROLL: Visual Self-Supervised Reinforcement Learning with Object Reasoning

classification cs.LG cs.RO
keywords reasoninglearningobjectreinforcementrollvisualbettergoal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Current image-based reinforcement learning (RL) algorithms typically operate on the whole image without performing object-level reasoning. This leads to inefficient goal sampling and ineffective reward functions. In this paper, we improve upon previous visual self-supervised RL by incorporating object-level reasoning and occlusion reasoning. Specifically, we use unknown object segmentation to ignore distractors in the scene for better reward computation and goal generation; we further enable occlusion reasoning by employing a novel auxiliary loss and training scheme. We demonstrate that our proposed algorithm, ROLL (Reinforcement learning with Object Level Learning), learns dramatically faster and achieves better final performance compared with previous methods in several simulated visual control tasks. Project video and code are available at https://sites.google.com/andrew.cmu.edu/roll.

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