A Visual Kinematics Calibration Method for Manipulator Based on Nonlinear Optimization
Peng Gang, Wang Zhihao, Yang Jin, Li Xinde

TL;DR
This paper introduces a monocular vision-based nonlinear optimization method for calibrating manipulator kinematics, significantly reducing system errors and improving positioning accuracy without expensive measurement tools.
Contribution
It proposes a novel calibration approach that avoids camera parameter errors by using nonlinear optimization with monocular vision, enhancing accuracy and universality.
Findings
Pixel deviation reduced from 7.9 to 0.99 pixels
Calibration error decreased by nearly 87%
Method improves end-position accuracy effectively
Abstract
The traditional kinematic calibration method for manipulators requires precise three-dimensional measuring instruments to measure the end pose, which is not only expensive due to the high cost of the measuring instruments but also not applicable to all manipulators. Another calibration method uses a camera, but the system error caused by the camera's parameters affects the calibration accuracy of the kinematics of the robot arm. Therefore, this paper proposes a method for calibrating the geometric parameters of a kinematic model of a manipulator based on monocular vision. Firstly, the classic Denavit-Hartenberg(D-H) modeling method is used to establish the kinematic parameters of the manipulator. Secondly, nonlinear optimization and parameter compensation are performed. The three-dimensional positions of the feature points of the calibration plate under each manipulator attitude…
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Taxonomy
TopicsRobotic Mechanisms and Dynamics · Advanced Vision and Imaging · Optical measurement and interference techniques
