Reinforcement Learning (RL) methods have been widely applied for robotic manipulations via sim-to-real transfer, typically with proprioceptive and visual information. However, the incorporation of tactile sensing into RL for contact-rich tasks lacks investigation. In this paper, we model a tactile sensor in simulation and study the effects of its feedback in RL-based robotic control via a zero-shot sim-to-real approach with domain randomization. We demonstrate that learning and controlling with feedback from tactile sensor arrays at the gripper, both in simulation and reality, can enhance grasping stability, which leads to a significant improvement in robotic manipulation performance for a door opening task. In real-world experiments, the door open angle was increased by 45% on average for transferred policies with tactile sensing over those without it.
翻译:强化学习(RL)方法已被广泛用于机器人操纵,通过模拟到真实的传输,通常使用自觉和视觉信息。然而,将触摸感应纳入遥控器,用于接触丰富的任务,却缺乏调查。在本文中,我们模拟了一个触觉感应器,以模拟方式研究其在以RL为基础的机器人控制中反馈的效果,采用零射线的模拟感应感应器到现实的随机化方法。我们证明,在模拟和现实中学习和控制从握手的触觉感应阵阵列得到的反馈,可以增强掌握稳定性,从而大大改进机器人操纵工作在开门任务上的性能。 在现实世界实验中,门开角平均增加了45%,用于对没有触觉的人群进行感应的转移政策。