Object dropping may occur when the robotic arm grasps objects with uneven mass distribution due to additional moments generated by objects' gravity. To solve this problem, we present a novel work that does not require extra wrist and tactile sensors and large amounts of experiments for learning. First, we obtain the center-of-mass position of the rod object using the widely fixed joint torque sensors on the robot arm and RGBD camera. Further, we give the strategy of grasping to improve grasp stability. Simulation experiments are performed in "Mujoco". Results demonstrate that our work is effective in enhancing grasping robustness.
翻译:当机器人臂抓取物体时,由于物体的重力产生的额外时间而造成质量分布不均的物体时,物体可能会被丢弃。为了解决这个问题,我们展示了一种新的工作,不需要额外的手腕和触摸感应器,也不需要大量实验来学习。首先,我们利用机器人臂和RGBD相机上广泛固定的联结扭感应器,获得了棒物体的中位位置。此外,我们提供了捕捉策略来提高抓取稳定性。模拟实验在“Mujoco”中进行。结果显示,我们的工作在加强捕捉稳性方面是有效的。