This paper aims to show that robots equipped with a vision-based tactile sensor can perform dynamic manipulation tasks without prior knowledge of all the physical attributes of the objects to be manipulated. For this purpose, a robotic system is presented that is able to swing up poles of different masses, radii and lengths, to an angle of 180 degrees, while relying solely on the feedback provided by the tactile sensor. This is achieved by developing a novel simulator that accurately models the interaction of a pole with the soft sensor. A feedback policy that is conditioned on a sensory observation history, and which has no prior knowledge of the physical features of the pole, is then learned in the aforementioned simulation. When evaluated on the physical system, the policy is able to swing up a wide range of poles that differ significantly in their physical attributes without further adaptation. To the authors' knowledge, this is the first work where a feedback policy from high-dimensional tactile observations is used to control the swing-up manipulation of poles in closed-loop.
翻译:本文旨在显示,配备了基于视觉的触觉传感器的机器人可以在不事先了解被操纵物体的所有物理属性的情况下执行动态操纵任务。 为此,将展示一个机器人系统,它能够将不同质量、弧度和长度的极杆向180度的角向上摆动,同时完全依靠触觉传感器提供的反馈。这是通过开发一个新型模拟器实现的,该模拟器精确地模拟了极与软感应器的相互作用。一个以感知性观测历史为条件的反馈政策,而该反馈政策又不事先了解极的物理特征,然后在上述模拟中学习。在对物理系统进行评估时,该政策能够在不作进一步调整的情况下,将各种物理特性差异很大的极向上摆动。据作者所知,这是首次使用高维触觉观测的反馈政策来控制闭环极的回旋操纵。