A novel method of automatic hand-eye calibration for robotic manipulator

Kung-Ting Wei, Yaojun Chu, Haiyun Gan
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引用次数: 1

Abstract

Aiming at the problem of manual operations and low accuracy in current hand-eye calibration process for a robotic manipulator, this paper proposes a novel method of Automatic Pose Generation and Calibration (APGC). First, a series of initial robot poses are automatically generated in Cartesian space. Then, RANSAC and K-means clustering algorithms are introduced to perform a two-step pre-screening process to select the optimal initial poses, so as to acquire robot poses that contribute to improving the calibration accuracy. Finally, the existing dual quaternion and convex relaxation global optimization theory are employed to solve the calibration matrix equation. The simulation results show that position and orientation errors of the APGC are more stable than those of two state of the arts to camera focal length noise. The experimental results show that the average position error is 0.516mm, the average orientation error is 0.048°. Compared with two state of the arts, the position and orientation errors are smaller, and the calibration accuracy is higher.
机械臂手眼自动标定的新方法
针对目前机械臂手眼标定过程中存在的手工操作和精度低的问题,提出了一种新的姿态自动生成与标定方法。首先,在笛卡尔空间中自动生成一系列初始机器人姿态。然后,引入RANSAC和K-means聚类算法进行两步预筛选,选择最优初始姿态,从而获得有助于提高标定精度的机器人姿态。最后,利用已有的对偶四元数和凸松弛全局优化理论求解标定矩阵方程。仿真结果表明,在相机焦距噪声的影响下,APGC的位置和方向误差比两种状态下的位置和方向误差更稳定。实验结果表明,平均位置误差为0.516mm,平均方位误差为0.048°。与两种技术相比,位置和方向误差更小,校准精度更高。
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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