论文标题

使用3D视觉的自动化合物和对接

Automated Rendezvous & Docking Using 3D Vision

论文作者

Aghili, Farhad

论文摘要

自适应卡尔曼滤波器增强了视力系统的稳健性和精度,以进行翻滚目标卫星的运动估计。这允许视觉引导的机器人完成目标的抓地力,即使在操作过程中发生遮挡。完整的动力学模型,包括轨道力学的各个方面,以进行准确的估计。基于该模型,开发了自适应的卡尔曼滤波器,不仅估算系统的状态,还估计所有模型参数,例如惯性比,质量中心和目标卫星主轴的旋转。通过使用机器人手臂根据轨道力学进行卫星模型进行实验,而卫星姿势是通过激光相机系统测量的。测量值发送到卡尔曼过滤器,然后驱动另一个机器人臂以抓住目标。结果表明,即使视觉系统被阻塞了几秒钟,也可以成功抓住。

The robustness and accuracy of a vision system for motion estimation of a tumbling target satellite are enhanced by an adaptive Kalman filter. This allows a vision-guided robot to complete the grasping of the target even if occlusion occurs during the operation. A complete dynamics model, including aspects of orbital mechanics, is incorporated for accurate estimation. Based on the model, an adaptive Kalman filter is developed that estimates not only the system states but also all the model parameters such as the inertia ratio, center-of-mass, and the rotation of the principal axes of the target satellite. An experiment is conducted by using a robotic arm to move a satellite mockup according to orbital mechanics while the satellite pose is measured by a laser camera system. The measurements are sent to the Kalman filter, which, in turn, drives another robotic arm to grasp the target. The results demonstrate successful grasping even if the vision system is blocked for several seconds.

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