4.6 Article

Batch Exploration With Examples for Scalable Robotic Reinforcement Learning

期刊

IEEE ROBOTICS AND AUTOMATION LETTERS
卷 6, 期 3, 页码 4401-4408

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LRA.2021.3068655

关键词

Deep learning methods; reinforcement learning

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资金

  1. Schmidt Futures
  2. ONR [N00014-20-1-2675]
  3. NSF GRFP

向作者/读者索取更多资源

Learning from diverse offline datasets is a promising approach towards learning general purpose robotic agents. However, a core challenge lies in collecting meaningful data without human intervention. By focusing exploration on important parts of the state space with weak human supervision, the proposed Batch Exploration with Examples (BEE) technique shows improved interaction with relevant objects and task performance in vision-based robotic manipulation tasks.
Learning from diverse offline datasets is a promising path towards learning general purpose robotic agents. However, a core challenge in this paradigm lies in collecting large amounts of meaningful data, while not depending on a human in the loop for data collection. One way to address this challenge is through task-agnostic exploration, where an agent attempts to explore without a task-specific reward function, and collect data that can be useful for any subsequent task. While these approaches have shown some promise in simple domains, they often struggle to explore the relevant regions of the state space in more challenging settings, such as vision-based robotic manipulation. This challenge stems from an objective that encourages exploring everything in a potentially vast state space. To mitigate this challenge, we propose to focus exploration on the important parts of the state space using weak human supervision. Concretely, we propose an exploration technique, Batch Exploration with Examples (BEE), that explores relevant regions of the state-space, guided by a modest number of human-provided images of important states. These human-provided images only need to be provided once at the beginning of data collection and can be acquired in a matter o fminutes, allowing us to scalably collect diverse datasets, which can then be combined with any batch RL algorithm. We find that BEE is able to tackle challenging vision-based manipulation tasks both in simulation and on a real Franka Emika Panda robot, and observe that compared to task-agnostic and weakly-supervised exploration techniques, it (1) interacts more than twice as often with relevant objects, and (2) improves subsequent task performance when used in conjunction with offline RL.

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