Latent Plans for Task-Agnostic Offline Reinforcement Learning

Erick Rosete-Beas, Oier Mees, Gabriel Kalweit, J. Boedecker, Wolfram Burgard
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引用次数: 22

Abstract

Everyday tasks of long-horizon and comprising a sequence of multiple implicit subtasks still impose a major challenge in offline robot control. While a number of prior methods aimed to address this setting with variants of imitation and offline reinforcement learning, the learned behavior is typically narrow and often struggles to reach configurable long-horizon goals. As both paradigms have complementary strengths and weaknesses, we propose a novel hierarchical approach that combines the strengths of both methods to learn task-agnostic long-horizon policies from high-dimensional camera observations. Concretely, we combine a low-level policy that learns latent skills via imitation learning and a high-level policy learned from offline reinforcement learning for skill-chaining the latent behavior priors. Experiments in various simulated and real robot control tasks show that our formulation enables producing previously unseen combinations of skills to reach temporally extended goals by"stitching"together latent skills through goal chaining with an order-of-magnitude improvement in performance upon state-of-the-art baselines. We even learn one multi-task visuomotor policy for 25 distinct manipulation tasks in the real world which outperforms both imitation learning and offline reinforcement learning techniques.
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任务不可知离线强化学习的潜在计划
长视界的日常任务和由多个隐式子任务组成的序列仍然是离线机器人控制的主要挑战。虽然许多先前的方法旨在通过模仿和离线强化学习的变体来解决这种设置,但学习的行为通常是狭窄的,并且经常难以达到可配置的长期目标。由于这两种范式具有互补的优势和劣势,我们提出了一种新的分层方法,结合这两种方法的优势,从高维相机观察中学习任务不可知论的长视界策略。具体而言,我们结合了通过模仿学习学习潜在技能的低级策略和通过离线强化学习学习潜在行为先验的高级策略。在各种模拟和真实机器人控制任务中的实验表明,我们的公式能够通过目标链将潜在技能“拼接”在一起,从而产生以前看不见的技能组合,从而达到暂时扩展的目标,并在最先进的基线上实现数量级的性能改进。我们甚至在现实世界中为25个不同的操作任务学习了一个多任务视觉运动策略,它优于模仿学习和离线强化学习技术。
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