人工智能
机械臂
计算机视觉
抓住
计算机科学
机器人
障碍物
对象(语法)
避障
路径(计算)
集合(抽象数据类型)
任务(项目管理)
Arm解决方案
粒子群优化
边界(拓扑)
机器人学
避碰
机器人运动学
机器人末端执行器
水准点(测量)
弹道
模拟
运动规划
夹持器
视野
移动机器人
机器人控制
领域(数学)
目标检测
作者
Tong Xu,Xiaomin Han,Hong-hui Liu,Yuhong Li
标识
DOI:10.1038/s41598-025-23144-2
摘要
The smart orchard tournament of the robot developer competition requires participants to utilise a robotic arm equipped with a monocular camera to grasp ping-pong balls bearing fruit patterns. Common issues include low object recognition accuracy, inefficient performance, and grasping failures due to collisions with obstacles. This paper proposes a novel object grasping framework, EPSO-TPPP-YOLOv8, based on a rigid robotic arm for the task of fruit picking. In the safe distance analysis section, the two obstacles, cylinder and sphere, are first modelled. The robotic arm is then considered as an object consisting of several cylinders. The formula for calculating the safe distance between the robot arm and the obstacle is provided, and the design of the obstacle avoidance path is guided according to the calculation results. In the robot arm path planning section, the hyper-parameters of the angles of each robot arm joint are first determined, and then particle swarm optimization based on a novel set of strategies and evaluation criteria is used to generate the desired paths. The findings reveal that, in the absence of human intervention, the proposed EPSO algorithm reliably identifies paths that adhere to safety boundary limits within 50 iterations. The EPSO-TPPP framework, when operated under human guidance, has been demonstrated to achieve this within 10 iterations. In the subsequent phase of vision-based object recognition phase, a distinctive dataset is constructed based on the specified task. It is an established fact that simulation and field experiments have demonstrated the efficacy of the robot arm's obstacle-avoidance grasping functionality.
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