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Personalized robot-assisted dressing using user modeling in latent spaces

机译:在潜在空间中使用用户建模的个性化机器人辅助敷料

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Robots have the potential to provide tremendous support to disabled and elderly people in their everyday tasks, such as dressing. Many recent studies on robotic dressing assistance usually view dressing as a trajectory planning problem. However, the user movements during the dressing process are rarely taken into account, which often leads to the failures of the planned trajectory and may put the user at risk. The main difficulty of taking user movements into account is caused by severe occlusions created by the robot, the user, and the clothes during the dressing process, which prevent vision sensors from accurately detecting the postures of the user in real time. In this paper, we address this problem by introducing an approach that allows the robot to automatically adapt its motion according to the force applied on the robot's gripper caused by user movements. There are two main contributions introduced in this paper: 1) the use of a hierarchical multi-task control strategy to automatically adapt the robot motion and minimize the force applied between the user and the robot caused by user movements; 2) the online update of the dressing trajectory based on the user movement limitations modeled with the Gaussian Process Latent Variable Model in a latent space, and the density information extracted from such latent space. The combination of these two contributions leads to a personalized dressing assistance that can cope with unpredicted user movements during the dressing while constantly minimizing the force that the robot may apply on the user. The experimental results demonstrate that the proposed method allows the Baxter humanoid robot to provide personalized dressing assistance for human users with simulated upper-body impairments.
机译:机器人有潜力为残疾人和老年人的日常工作(例如穿衣)提供巨大的支持。最近关于机器人修整辅助的许多研究通常将修整视为轨迹规划问题。但是,在修整过程中很少考虑用户的运动,这通常会导致计划轨迹的失败,并可能使用户处于危险之中。考虑用户运动的主要困难是由机器人,用户和衣服在修整过程中造成的严重咬合引起的,这阻碍了视觉传感器实时准确地检测用户的姿势。在本文中,我们通过引入一种方法来解决此问题,该方法允许机器人根据用户运动在机器人抓具上施加的力来自动调整其运动。本文介绍了两个主要贡献:1)使用分层的多任务控制策略来自动适应机器人的运动,并最大程度地减少由用户的运动引起的用户与机器人之间的作用力; 2)基于在潜在空间中使用高斯过程潜在变量模型建模的用户移动限制,修整轨迹的在线更新,以及从此类潜在空间中提取的密度信息。这两个贡献的组合导致个性化的敷料辅助,该辅助可以在敷料期间应对用户无法预测的运动,同时不断减小机器人可能施加在使用者身上的力。实验结果表明,所提出的方法允许Baxter类人机器人为模拟上半身损伤的人类用户提供个性化的穿戴辅助。

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