Uncertainty-Aware Hand-Eye Calibration

IEEE TRANSACTIONS ON ROBOTICS(2024)

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摘要
We provide a generic framework for the hand-eye calibration of vision-guided industrial robots. In contrast to traditional methods, we explicitly model the uncertainty of the robot in a stochastically founded way. Albeit the repeatability of modern industrial robots is high, their absolute accuracy typically is much lower. This uncertainty-especially if not considered-deteriorates the result of the hand-eye calibration. Our proposed framework does not only result in a high accuracy of the computed hand-eye pose but also provides reliable information about the uncertainty of the robot. It further provides corrected robot poses for a convenient and inexpensive robot calibration. Our framework is computationally efficient and generic in several regards. It supports the use of a calibration target as well as self-calibration without the need for known 3-D points. It optionally enables the simultaneous calibration of the interior camera parameters. The framework is also generic with regard to the robot type and, hence, supports antropomorphic as well as selective compliance assembly robot arm (SCARA) robots, for example. Simulated and real experiments show the validity of the proposed methods. An extensive evaluation of our framework on a public dataset shows a considerably higher accuracy than 15 state-of-the-art methods.
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关键词
Robots,Robot kinematics,Calibration,Cameras,Robot vision systems,Uncertainty,Three-dimensional displays,Automation,calibration,computer vision,hand-eye calibration,industrial robots,measurement uncertainty
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