基于视觉反馈的机器人强化学习应用

Hatem Fahd Al-Selwi, A. Aziz, F. S. Abas, Z. Zyada
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引用次数: 1

摘要

机器人在我们日常生活中的存在正变得越来越普遍,机器人开始执行更复杂的任务。这种任务复杂性的增加使传统的控制系统无法满足要求。因此,机器人需要一种合理的方法来学习如何执行这些任务。强化学习使机器人能够在没有高度工程化的控制系统的情况下执行复杂的任务。然而,在机器人应用中使用强化学习受到诸如高维等问题的挑战。因此,在本文中,我们研究了解决高维问题的后见经验回放(HER)算法的性能。在本文中,我们使用模拟机械臂来分析算法的性能,以选择和放置不同的物体。然后,我们提出了使用视觉反馈来控制机械臂的抓取器。结果和分析强调了HER在处理抓取点有限的物体时的一些局限性。我们提出的方法允许机械臂使用相同的训练策略来挑选对象,而无需重新训练代理以获取新对象。最后,我们证明了使用我们的方法的机械臂拾取物体的成功率比没有视觉反馈的机械臂要高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning for Robotic Applications with Vision Feedback
The presence of robots in our daily life is becoming more common, where robots start carrying out more complex tasks. This increase in the complexity of tasks makes conventional control system insufficient. Therefore, a plausible approach is required for robots to learn how to perform these tasks. Reinforcement learning enables robots to perform complex tasks without highly engineered control systems. However, using reinforcement learning in robotic applications is challenged by several problems such as high dimensionality. Thus, in this paper, we study the performance of the Hindsight Experience Replay (HER) algorithm which addresses the high dimensionality problem. In this paper, we analyze the algorithm performance using a simulated robotic arm to pick and place different objects. Then, we propose the use of vision feedback which is used to control the gripper of the robotic arm. The results and analysis highlights some of HER limitations when dealing with objects that have limited grasping points. Our proposed method allows the robotic arm to pick objects using the same trained policy without the need to retrain the agent for new objects. Finally, we prove that using our method the robotic arm can pick the objects with higher success rate compared to the one without vision feedback.
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