Tracking moving target for 6 degree-of-freedom robot manipulator with adaptive visual servoing based on deep reinforcement learning PID controller.

Fei Wang, Baiming Ren, Yue Liu, Ben Cui
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引用次数: 1

Abstract

In this paper, an image-based visual servoing (IBVS) controller with a 6 degree-of-freedom robotic manipulator that tracks moving objects is investigated using the proposed Deep Q-Networks and proportional-integral-derivative (DQN-PID) controller. First, the classical IBVS controller and the problem of feature loss and large steady-state error for tracking moving targets are introduced. Then, a DQN-PID based IBVS method is proposed to solve the problem of feature loss and large steady-state error and improve the servo precision, as the existing methods are hard to use for solve the problems. Specifically, the IBVS method is inherited by our controller to build the tracking model, and a value-based reinforcement learning method is proposed as an adaptive law for dynamically tuning the PID parameters in the discrete space, which can track the moving target and keep the servo feature in the field of the camera. Finally, compared with the different existing methods, the DQN-PID based IBVS method has merits of higher accuracy and more stable tracking, or generalization.
基于深度强化学习PID控制器的自适应视觉伺服六自由度机械臂运动目标跟踪。
本文利用所提出的深度q -网络和比例-积分-导数(DQN-PID)控制器,研究了一种具有6自由度运动目标跟踪机器人的基于图像的视觉伺服(IBVS)控制器。首先,介绍了经典IBVS控制器及其在运动目标跟踪中存在的特征损失和稳态误差大的问题。然后,提出了一种基于DQN-PID的IBVS方法,解决了现有方法难以解决的特征损失和稳态误差大的问题,提高了伺服精度。具体来说,我们的控制器继承IBVS方法建立跟踪模型,并提出了一种基于值的强化学习方法作为自适应律在离散空间中动态整定PID参数,既能跟踪运动目标,又能保持摄像机视场内的伺服特征。最后,与现有的各种方法相比,基于DQN-PID的IBVS方法具有更高的精度和更稳定的跟踪或泛化的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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