基于点云投影算法的自适应自动机器人刀具路径生成

Xie Zhen, Josh Chen Ye Seng, N. Somani
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引用次数: 15

摘要

许多工业制造过程需要大量的人力来手工完成任务,例如手工抛光和遮盖。工业机器人可以用来代替大部分繁琐和重复的任务。然而,使用机器人程序为制造过程生成刀具路径可能需要编程技能和专业知识。此外,计算机辅助设计(CAD)文件可能无法用于工程师设计机器人刀具路径。因此,我们提出了一种利用目标工件的扫描点云数据自动生成制造过程自适应机器人刀具路径的方法。该算法的核心是基于平面上的点云投影、刀具轨迹模式设计和逆变换矩阵,将二维刀具轨迹投影回三维点云。该算法基于点云库(PCL)和OpenCV库。在点云中生成刀具路径后,利用机器人操作系统(ROS)进行轨迹规划和碰撞检查。该算法可应用于掩模、抛光、喷涂等多种加工过程。
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Adaptive Automatic Robot Tool Path Generation Based on Point Cloud Projection Algorithm
Many industry manufacturing processes require a lot of manpower to accomplish tasks manually, for example, manual polishing and masking. Industrial robot can be used to replace most of the tedious and repeated tasks. However, using robot program to generate the tool path for the manufacturing process might need programming skills and expertise. Besides, Computer Aided Design (CAD) files might not be available or accurate for the engineer to design the robot tool path. Hence, we propose an automatic way to generate the adaptive robot tool path for manufacturing process by using scan point cloud data of the target coupon. The core algorithm is based on point cloud projection on plane, tool path pattern design and reverse transform matrix to project the 2d tool path back to 3d point cloud. The algorithm is based on Point Cloud Library (PCL) and OpenCV libraries. After the toolpath is generated in the point cloud, Robot Operating System (ROS) is used to plan trajectory and check for collision. The automated tool path generation algorithm can be applied to multiple manufacturing process, such as masking, polishing and painting.
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