Dynamic Object Grasping in Human-Robot Cooperation Based on Mixed-Reality

A. Demian, M. Ostanin, A. Klimchik
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引用次数: 1

Abstract

Static Object grasping is a challenging task that has been studied for decades. The difficulty of the task comes back to the reason that a grasping attempt can have many solutions or due to the uncertainty about the targeted object’s features and characteristics. This makes the fact about dynamic object grasping with un-modeled dynamics even more challenging. In this paper, an approach for dynamic object grasping is presented. The approach considers human-robot handover operation where the robot should be able to track human’s holding-object hand and plan a successful grasp of the object in hand. The system was implemented with the help of Mixed-Reality using HoloLens glasses for human’s hand tracking. A serial manipulator was used to execute the operation mounted with end-effector-mounted camera to perform computer vision operations for grasp planning and correction. The main task is robot at random configuration can be able to find hand-holding object and plan grasp on object in hand. The implemented system shows success and was able to perform most of the grasping tasks successfully.
基于混合现实的人机协作中动态物体抓取
静态物体抓取是一项具有挑战性的任务,已经被研究了几十年。任务的困难又回到了抓取尝试可能有许多解决方案的原因,或者是由于目标物体的特征和特征的不确定性。这使得与未建模的动力学有关的动态对象抓取的事实更具挑战性。本文提出了一种动态物体抓取方法。该方法考虑了人机切换操作,机器人应能够跟踪人的手握物,并计划成功抓取手中的物体。该系统是在混合现实技术的帮助下实现的,使用HoloLens眼镜进行人体手部跟踪。采用串联机械手执行操作,安装末端执行器摄像机进行计算机视觉操作,进行抓取规划和校正。机器人的主要任务是在随机配置的情况下能够找到手持物体并计划抓取手中的物体。所实现的系统显示成功,能够成功执行大部分抓取任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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