Optical-Flow-Based Visual Servoing for Robotic Moving Control Using Closed-Loop Joints

2021 
This paper studied an optical-flow-based visual servoing method for eye-in-hand robotics task manipulation without system calibration. Firstly, considering the object feature points are easy to be lost with the traditional Lucas-Kanade(LK) optical flow method in the process of camera fast moving. We propose an improved pyramid optical flow tracking algorithm which iterates the vision image by layered, this algorithm obtains a hierarchy image by building a Gaussian pyramid, which can reduce the image motion speed and improve the tracking robust performance. In this work, we need to use the information obtained in the optical flow tracking process for visual servo control to drive the robot to complete the task manipulation, thus we use joints closed-loop controller and joint-image Jacobian matrix to construct a new visual servoing system for robotic motion control based on improved optical flow method. Finally, we have completed the visual servoing task manipulation on an eye-in-hand uncalibration robotics with six degrees of freedom (six-DOF). The experimental results show the effectiveness and robustness of the proposed scheme.
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