Deep reinforcement learning (RL) has emerged as a promising approach for autonomously acquiring complex behaviors from low level sensor observations. Although a large portion of deep RL research has focused on applications in video games and simulated control, which does not connect with the constraints of learning in real environments, deep RL has also demonstrated promise in enabling physical robots to learn complex skills in the real world. At the same time,real world robotics provides an appealing domain for evaluating such algorithms, as it connects directly to how humans learn; as an embodied agent in the real world. Learning to perceive and move in the real world presents numerous challenges, some of which are easier to address than others, and some of which are often not considered in RL research that focuses only on simulated domains. In this review article, we present a number of case studies involving robotic deep RL. Building off of these case studies, we discuss commonly perceived challenges in deep RL and how they have been addressed in these works. We also provide an overview of other outstanding challenges, many of which are unique to the real-world robotics setting and are not often the focus of mainstream RL research. Our goal is to provide a resource both for roboticists and machine learning researchers who are interested in furthering the progress of deep RL in the real world.
翻译:深入强化学习(RL)是自主获取低水平传感器观测复杂行为的一个很有希望的方法。虽然深层次RL研究的很大一部分侧重于视频游戏和模拟控制的应用,而这些应用与真实环境中学习的制约因素无关,但深层RL也展示了让物理机器人在现实世界学习复杂技能的希望。与此同时,现实世界机器人为评价这种算法提供了一个有吸引力的领域,因为它直接与人类学习的方式相关联;是真实世界中体现的代理人。在现实世界中认识和移动的学习提出了许多挑战,其中一些挑战比其他挑战更容易解决,有些挑战往往在仅侧重于模拟域的远程游戏和模拟控制研究中得不到考虑。在这个审查文章中,我们介绍了一些涉及机器人深层RL的案例研究。在这些案例研究的基础上,我们讨论了深层RL的常见挑战及其在这些工作中的应对方式。我们还概述了其他悬而未决的挑战,其中许多挑战对于现实世界机器人的设置是独一无二的,而且往往不是主流RL研究的重点。我们的目标就是为真正的机器人研究提供一种资源,在深层次的机器人中,我们的目标是为世界学习一个深层次的机器人。