一种基于视觉的移动机械手抓取物体的模型预测控制方法

M. Logothetis, G. Karras, Shahab Heshmati-alamdari, Panagiotis Vlantis, K. Kyriakopoulos
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引用次数: 19

摘要

提出了一种基于视觉的移动机械手抓取与运动控制体系结构设计。利用机载RGB-D传感器系统获取的部分点云估计物体的最佳抓取区域。采用非线性模型预测控制方法对移动机械臂的够握运动进行控制。为了使系统在具有静态障碍物的受限工作空间中运行,相应地制定了控制器。该方案的目标是在保证输入和状态约束(如遮挡和避障、工作空间边界和视场约束)的情况下,引导机器人末端执行器向最优抓取区域移动。利用8自由度的KUKA Youbot机器人在不同的伸手抓握场景中对所提出策略的性能进行了实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Model Predictive Control Approach for Vision-Based Object Grasping via Mobile Manipulator
This paper presents the design of a vision-based object grasping and motion control architecture for a mobile manipulator system. The optimal grasping areas of the object are estimated using the partial point cloud acquired from an onboard RGB-D sensor system. The reach-to-grasp motion of the mobile manipulator is handled via a Nonlinear Model Predictive Control scheme. The controller is formulated accordingly in order to allow the system to operate in a constrained workspace with static obstacles. The goal of the proposed scheme is to guide the robot's end-effector towards the optimal grasping regions with guaranteed input and state constraints such as occlusion and obstacle avoidance, workspace boundaries and field of view constraints. The performance of the proposed strategy is experimentally verified using an 8 Degrees of Freedom KUKA Youbot in different reach-to-grasp scenarios.
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