从人的示范看机器人抓取规划

Kaimeng Wang, Yongxiang Fan, I. Sakuma
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引用次数: 0

摘要

机器人抓取是实现复杂工业任务要求的一项重要能力。为了满足各种实际需要,在这一领域进行了大量的研究。然而,由于物体几何形状的限制和任务的各种目的,产生稳定的抓取仍然是具有挑战性的。在这项工作中,我们提出了一种新的基于演示编程的抓取规划框架,该框架从单个人类演示中提取人类抓取技能(接触区域和接近方向),然后制定优化问题,利用提取的抓取技能生成稳定的抓取。该方法不需要从人的演示中学习隐含的协同效应,也不需要映射人的手和机器人抓取器之间的不同运动学,而是能够学习一种直观的人的意图,包括潜在的接触区域和抓取接近方向。此外,所引入的优化公式能够通过最小化物体上的演示接触区域与夹持器手指表面之间的曲面拟合误差,并对演示接近方向与夹持器接近方向之间的不对准进行惩罚来搜索最优抓取。通过一系列实验验证了该算法在仿真和现实世界中的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robot Grasp Planning from Human Demonstration
Robot grasping is an essential capability to achieve the requirements of complex industrial tasks. Numerous studies have been done in this area to meet various practical needs. However, generating a stable grasp is still challenging due to the object geometry constraints and various purposes of the tasks. In this work, we propose a novel Programming-by-Demonstration based grasp planning framework that extracts human grasp skills (contact region and approach direction) from a single human demonstration and then formulates an optimization problem to generate a stable grasp with the extracted grasp skills. Instead of learning implicit synergies from human demonstration or mapping the dissimilar kinematics between the human hand and robot gripper, the proposed approach is able to learn an intuitive human intention that involves the potential contact region and the grasping approach direction. Furthermore, the introduced optimization formulation is able to search for the optimal grasp by minimizing the surface fitting error between the demonstrated contact regions on the object and the gripper finger surface, and penalizing the misalignment between the demonstrated approach direction and the approach direction of the gripper. A series of experiments are conducted to verify the effectiveness of the proposed algorithm in both simulation and the real world
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