Kim Tien Ly, Mithun Poozhiyil, Harit Pandya, G. Neumann, Ayse Kucukyilmaz
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引用次数: 5
摘要
本文提出了一种基于对人类运动意图的预测来调节机器人指导水平的触觉共享控制范式。该方法结合了从人类演示中学习到的机器人轨迹,并根据检测到的意图与这些轨迹的匹配程度动态调整机器人辅助水平。通过3D Systems Touch X触觉界面控制的Franka Emika Panda机器人手臂,进行了一项实验研究,以演示远程操作拾取和放置任务的范例。在实验中,人类操作员在观察2D屏幕上的环境的同时遥控机器人手臂。当人类远程操作机械臂时,物体被跟踪,人类的运动意图(例如,哪个物体将被选中或哪个垃圾箱将被接近)被预测使用深度q -网络(DQN)。使用概率运动原语(Probabilistic Movement Primitives, promp)从人类演示中学习到当前机器人状态和基线机器人轨迹,并考虑了这些预测。然后,检测到的意图用于调节ProMP轨迹,以调节运动并适应不断变化的物体配置。因此,系统产生自适应力引导作为加权虚拟夹具呈现在触觉设备上。对12名参与者进行的用户研究结果表明,所提出的范式可以成功地引导用户实现鲁棒抓取配置,并通过减少抓取尝试次数、提高轨迹平滑度和长度带来更好的性能。
Intent-Aware Predictive Haptic Guidance and its Application to Shared Control Teleoperation
This paper presents a haptic shared control paradigm that modulates the level of robotic guidance, based on predictions of human motion intentions. The proposed method incorporates robot trajectories learned from human demonstrations and dynamically adjusts the level of robotic assistance based on how closely the detected intentions match these trajectories. An experimental study is conducted to demonstrate the paradigm on a teleoperated pick-and-place task using a Franka Emika Panda robot arm, controlled via a 3D Systems Touch X haptic interface. In the experiment, the human operator teleoperates a remote robot arm while observing the environment on a 2D screen. While the human teleoperates the robot arm, the objects are tracked, and the human’s motion intentions (e.g., which object will be picked or which bin will be approached) are predicted using a Deep Q-Network (DQN). The predictions are made considering the current robot state and baseline robot trajectories that are learned from human demonstrations using Probabilistic Movement Primitives (ProMPs). The detected intentions are then used to condition the ProMP trajectories to modulate the movement and accommodate changing object configurations. Consequently, the system generates adaptive force guidance as weighted virtual fixtures that are rendered on the haptic device. The outcomes of the user study, conducted with 12 participants, indicate that the proposed paradigm can successfully guide users to robust grasping configurations and brings better performance by reducing the number of grasp attempts and improving trajectory smoothness and length.