Adapting for Calibration Disturbances: A Neural Uncalibrated Visual Servoing Policy

ICRA 2024(2024)

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Abstract
Visual servoing (VS) is a widely used technique in industries where there are hundreds of robots, but it requires accurate camera calibration including camera intrinsic and extrinsic parameters. However, it is labour-intensive to calibrate robots one-by-one in practical use. In this paper, we propose a neural uncalibrated VS policy (NUVS) that can adapt to calibration disturbances with an adaption mechanism and a control-oriented guidance. It bridges the disturbance adaption of classical VS methods and the large convergence of learning-based VS methods. NUVS estimates the calibration embedding from past observations and servos to the desired pose under the supervision of a PBVS that can access the ground truth in simulation. With this adaption mechanism, NUVS outperforms the classical IBUVS algorithm when facing large initial camera pose offsets under the calibration disturbance. Supplementary material in: https://sites.google.com/view/neural-uncalibrated-vs
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Key words
Service Robotics,Deep Learning in Grasping and Manipulation,Visual Servoing
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