High precision positioning method via robot-driven three-dimensional measurement

Hua Luo, Kecheng Zhang, Junyun Shang, Meng-Long Cao, Rui Li, Na Yang, Jun Cheng
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Abstract

In the process of intelligent manufacturing, all kinds of complex workpieces in aerospace, automobile and other fields need to be measured and identified with high precision, so that industrial robots can sort or assemble the workpieces. The structure of the workpieces is complex, the surface texture is weak, and they are scattered and stacked on the automatic production line, so there are some problems such as low accuracy of three-dimensional (3D) measurement and positioning and low efficiency. To solve these problems, a high precision positioning method based on robot-driven 3D measurement is proposed. Firstly, the 3D point cloud data of the complex workpieces is obtained from the structured light 3D measurement device, and then the point cloud data is processed by the sampling consistent initial registration algorithm (SAC-IA) and the iterative nearest point algorithm (ICP). Through the rough estimation and accurate solution of the position and attitude of the workpiece, the 3D attitude of the workpieces in the coordinate system of the structured-light 3D measurement device is obtained. Finally, the spatial pose solution algorithm is used to calculate the 3D attitude of the workpieces in the robot coordinate system and guide the robot to grasp automatically. The experiments show that the grasping position error is 0.34mm, and the grasping angle error is 0.36°. It can accurately measure and identify the point cloud target, calculate the 3D attitude of the complex workpieces, and accurately guide the robot to grab the workpiece automatically, which can be popularized and applied in the industry.
机器人驱动的三维测量高精度定位方法
在智能制造过程中,航空航天、汽车等领域的各种复杂工件都需要进行高精度的测量和识别,以便工业机器人对工件进行分拣或组装。工件结构复杂,表面纹理弱,且在自动生产线上分散堆放,存在三维(3D)测量定位精度低、效率低等问题。为了解决这些问题,提出了一种基于机器人驱动的三维测量的高精度定位方法。首先从结构光三维测量装置获取复杂工件的三维点云数据,然后采用采样一致初始配准算法(SAC-IA)和迭代最近点算法(ICP)对点云数据进行处理。通过对工件位置和姿态的粗略估计和精确求解,得到了工件在结构光三维测量装置坐标系下的三维姿态。最后,利用空间位姿解算法计算工件在机器人坐标系中的三维姿态,引导机器人自动抓取。实验表明,抓取位置误差为0.34mm,抓取角度误差为0.36°。它可以精确测量和识别点云目标,计算复杂工件的三维姿态,并精确引导机器人自动抓取工件,可在工业中推广应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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