RL-CycleGAN: Reinforcement Learning Aware Simulation-to-Real

Kanishka Rao, Chris Harris, A. Irpan, S. Levine, Julian Ibarz, Mohi Khansari
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引用次数: 130

Abstract

Deep neural network based reinforcement learning (RL) can learn appropriate visual representations for complex tasks like vision-based robotic grasping without the need for manually engineering or prior learning a perception system. However, data for RL is collected via running an agent in the desired environment, and for applications like robotics, running a robot in the real world may be extremely costly and time consuming. Simulated training offers an appealing alternative, but ensuring that policies trained in simulation can transfer effectively into the real world requires additional machinery. Simulations may not match reality, and typically bridging the simulation-to-reality gap requires domain knowledge and task-specific engineering. We can automate this process by employing generative models to translate simulated images into realistic ones. However, this sort of translation is typically task-agnostic, in that the translated images may not preserve all features that are relevant to the task. In this paper, we introduce the RL-scene consistency loss for image translation, which ensures that the translation operation is invariant with respect to the Q-values associated with the image. This allows us to learn a task-aware translation. Incorporating this loss into unsupervised domain translation, we obtain the RL-CycleGAN, a new approach for simulation-to-real-world transfer for reinforcement learning. In evaluations of RL-CycleGAN on two vision-based robotics grasping tasks, we show that RL-CycleGAN offers a substantial improvement over a number of prior methods for sim-to-real transfer, attaining excellent real-world performance with only a modest number of real-world observations.
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RL-CycleGAN:强化学习感知模拟到真实
基于深度神经网络的强化学习(RL)可以为复杂的任务(如基于视觉的机器人抓取)学习适当的视觉表示,而无需手动设计或事先学习感知系统。然而,RL的数据是通过在期望的环境中运行代理来收集的,对于像机器人这样的应用程序,在现实世界中运行机器人可能非常昂贵和耗时。模拟训练提供了一个有吸引力的替代方案,但是确保在模拟中训练的策略能够有效地转移到现实世界中需要额外的机器。模拟可能与现实不匹配,通常,弥合模拟与现实之间的差距需要领域知识和特定任务的工程。我们可以通过使用生成模型将模拟图像转换为现实图像来自动化这一过程。然而,这种类型的翻译通常是与任务无关的,因为翻译的图像可能不会保留与任务相关的所有特征。在本文中,我们引入了用于图像平移的RL-scene一致性损失,它确保了平移操作相对于与图像相关的q值是不变的。这使我们能够学习任务感知翻译。将这种损失整合到无监督域翻译中,我们获得了RL-CycleGAN,这是一种用于强化学习的模拟到现实世界迁移的新方法。在对两个基于视觉的机器人抓取任务的RL-CycleGAN的评估中,我们表明RL-CycleGAN比许多先前的模拟到真实转移方法提供了实质性的改进,仅用少量的真实世界观察就获得了出色的真实世界性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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