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Collision-Free Motion Planning for Human-Robot Collaborative Safety under Cartesian Constraint

机译:在笛卡尔约束下的人体机器人协作安全的自由运动规划

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This paper presents a real-time motion planning and control design of a robotic arm for human-robot collaborative safety. A novel collision-free motion planning method is proposed not only to keep robot body from colliding with objects but also preserve the execution of robot's original task under the Cartesian constraint of the environment. Multiple KinectV2 depth cameras are utilized to model and track dynamic obstacles (e.g. Humans and objects) inside the robot workspace. Depth images are applied to generate point cloud of segmented objects in the environment A K-nearest neighbor (KNN) searching algorithm is used to cluster and find the closest point from the obstacle to the robot. Then a Kalman filter is applied to estimate the obstacle position and velocity. For the collision avoidance in collaborative operation, attractive and repulsive potential is generated for robot end effector based on the task specification and obstacle observation. Practical experiments show that the 6-DOF robot arm can effectively avoid an obstacle in a constrained environment and complete the original task.
机译:本文介绍了用于人机协作安全性的机器人手臂的实时运动规划和控制设计。提出了一种新颖的防触发运动规划方法,不仅可以防止机器人体与物体碰撞,而且在环境的笛卡尔限制下保留机器人的原始任务的执行。多个Kinectv2深度摄像机用于在机器人工作区内模拟和跟踪动态障碍(例如人体和物体)。应用深度图像以在环境中生成分段对象的点云,k-collest邻居(knn)搜索算法用于群集,并从机器人到障碍物的最接近的点。然后应用卡尔曼滤波器来估计障碍物位置和速度。对于协同操作中的碰撞避免,基于任务规范和障碍观察,为机器人末端执行器产生有吸引力和排斥的潜力。实际实验表明,6-DOF机器人臂可以有效地避免受限制环境中的障碍物,并完成原始任务。

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