...
首页> 外文期刊>Robotics and Autonomous Systems >Coupled dynamical system based arm-hand grasping model for learning fast adaptation strategies
【24h】

Coupled dynamical system based arm-hand grasping model for learning fast adaptation strategies

机译:基于耦合动力学系统的手臂抓握模型,用于学习快速适应策略

获取原文
获取原文并翻译 | 示例

摘要

Performing manipulation tasks interactively in real environments requires a high degree of accuracy and stability. At the same time, when one cannot assume a fully deterministic and static environment, one must endow the robot with the ability to react rapidly to sudden changes in the environment. These considerations make the task of reach and grasp difficult to deal with. We follow a Programming by Demonstration (PbD) approach to the problem and take inspiration from the way humans adapt their reach and grasp motions when perturbed. This is in sharp contrast to previous work in PbD that uses unperturbed motions for training the system and then applies perturbation solely during the testing phase. In this work, we record the kinematics of arm and fingers of human subjects during unperturbed and perturbed reach and grasp motions. In the perturbed demonstrations, the target's location is changed suddenly after the onset of the motion. Data show a strong coupling between the hand transport and finger motions. We hypothesize that this coupling enables the subject to seamlessly and rapidly adapt the finger motion in coordination with the hand posture. To endow our robot with this competence, we develop a coupled dynamical system based controller, whereby two dynamical systems driving the hand and finger motions are coupled. This offers a compact encoding for reach-to-grasp motions that ensures fast adaptation with zero latency for re-planning. We show in simulation and on the real iCub robot that this coupling ensures smooth and "human-like" motions. We demonstrate the performance of our model under spatial, temporal and grasp type perturbations which show that reaching the target with coordinated hand-arm motion is necessary for the success of the task.
机译:在实际环境中以交互方式执行操纵任务需要高度的准确性和稳定性。同时,当人们无法假设一个完全确定性和静态的环境时,必须赋予机器人对环境突然变化做出快速反应的能力。这些考虑因素使得难以达到和把握的任务。我们遵循按演示编程(PbD)的方法来解决问题,并从人类适应他们的触及范围并在受到干扰时掌握动作的方式中获得启发。这与PbD中以前的工作形成鲜明对比,之前的工作使用无干扰的运动来训练系统,然后仅在测试阶段应用干扰。在这项工作中,我们记录了人类对象的手臂和手指在不受干扰和干扰的范围内的运动学,并掌握了运动。在受干扰的演示中,运动开始后,目标的位置突然改变。数据显示出手部运动与手指运动之间的强耦合。我们假设这种耦合使对象能够无缝,快速地与手指姿势协调地适应手指运动。为了使我们的机器人具备这一能力,我们开发了基于耦合动力系统的控制器,从而将驱动手和手指运动的两个动力系统耦合在一起。这为抓握运动提供了紧凑的编码,可确保以零延迟进行快速调整以进行重新规划。我们在仿真中和在真正的iCub机器人上表明,这种耦合确保了平稳且“类似于人的”运动。我们演示了在空间,时间和抓地力类型扰动下我们的模型的性能,这些扰动表明协调完成的手臂运动到达目标对于成功完成任务是必要的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号