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首页> 外文期刊>International Journal of Advanced Robotic Systems >Visual servoing of robot manipulator with weak field-of-view constraints
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Visual servoing of robot manipulator with weak field-of-view constraints

机译:具有弱视野约束的机器人操纵器的视觉伺服

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Aiming at the problem of servoing task failure caused by the manipulated object deviating from the camera field-of-view (FOV) during the robot manipulator visual servoing (VS) process, a new VS method based on an improved tracking learning detection (TLD) algorithm is proposed in this article, which allows the manipulated object to deviate from the camera FOV in several continuous frames and maintains the smoothness of the robot manipulator motion during VS. Firstly, to implement the robot manipulator visual object tracking task with strong robustness under the weak FOV constraints, an improved TLD algorithm is proposed. Then, the algorithm is used to extract the image features (object in the camera FOV) or predict image features (object out of the camera FOV) of the manipulated object in the current frame. And then, the position of the manipulated object in the current image is further estimated. Finally, the visual sliding mode control law is designed according to the image feature errors to control the motion of the robot manipulator so as to complete the visual tracking task of the robot manipulator to the manipulated object in complex natural scenes with high robustness. Several robot manipulator VS experiments were conducted on a six-degrees-of-freedom MOTOMANSV3 industrial manipulator under different natural scenes. The experimental results show that the proposed robot manipulator VS method can relax the FOV constraint requirements on real-time visibility of manipulated object and effectively solve the problem of servoing task failure caused by the object deviating from the camera FOV during the VS.
机译:针对由偏离摄像机视野(FOV)的操纵对象引起的伺服任务失败问题,该方法在机器人操纵器视觉伺服(VS)过程中,一种基于改进的跟踪学习检测(TLD)的新VS方法本文提出了算法,该算法允许被操纵的物体在几个连续框架中偏离相机FOV,并在VS中保持机器人操纵器运动的平滑度。首先,为了在弱FOV约束下实现具有强大鲁棒性的机器人操纵器视觉对象跟踪任务,提出了一种改进的TLD算法。然后,该算法用于在当前帧中预测被操纵对象的图像特征(对象FOV中的对象)或预测图像特征(对象从相机FOV中的对象)。然后,进一步估计了当前图像中的操纵对象的位置。最后,根据图像特征误差设计了视觉滑模控制定律,以控制机器人操纵器的运动,以便在具有高稳健性的复杂自然场景中完成机器人操纵器的视觉跟踪任务。在不同的自然场景下,几个机器人操纵器VS实验是在六个自由的Motomansv3工业机械手上进行的。实验结果表明,所提出的机器人操纵器VS方法可以放宽对操纵对象的实时可见性的FOV约束要求,有效解决在VS期间偏离相机FOV的物体引起的伺服任务失败问题。

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