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首页> 外文期刊>IEEE transactions on industrial informatics >Adaptive Image-Based Visual Servoing With Temporary Loss of the Visual Signal
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Adaptive Image-Based Visual Servoing With Temporary Loss of the Visual Signal

机译:视觉信号暂时丢失的基于自适应图像的视觉伺服

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摘要

Image-based visual servoing (IBVS) can reach a desired position for a relatively stationary target using continuous visual feedback. Proper feature extraction and appropriate servoing control laws are essential to performance for IBVS. IBVS control can be interrupted or interfered abruptly if no features are extracted when the observed object is occluded. To address the problem of missing feature points in current images during a visual navigation task, a homography method that uses a priori visual information is proposed to predict all of the missing feature points and to ensure the execution of IBVS. The mixture parameter for the image Jacobian matrix can also affect the control of IBVS. The settings for the mixture parameter are heuristic so there is no a systematic approach for most IBVS applications. An adaptive control approach is proposed to determine the mixture parameter. The proposed method uses a reinforcement learning (RL) method to adaptively adjust the mixture parameter during the robot movement, which allows more efficient control than a constant parameter. A logarithmic interval state-space partition for RL is used to ensure efficient learning. The integrated visual servoing control system is validated by several experiments that involve wheeled mobile robots reaching a target with a desired configuration. The results for simulation and experiment demonstrate that the proposed method has a faster convergence rate than other methods.
机译:使用连续的视觉反馈,基于图像的视觉伺服(IBVS)可以到达相对固定目标的所需位置。正确的特征提取和适当的伺服控制规则对于IBVS的性能至关重要。如果在观察对象被遮挡时未提取任何特征,则IBVS控制可能会中断或突然受到干扰。为了解决视觉导航任务中当前图像中缺少特征点的问题,提出了一种使用先验视觉信息的单应性方法来预测所有丢失的特征点并确保IBVS的执行。图像雅可比矩阵的混合参数也会影响IBVS的控制。混合参数的设置是启发式的,因此对于大多数IBVS应用程序没有系统的方法。提出了一种自适应控制方法来确定混合参数。所提出的方法使用强化学习(RL)方法来在机器人运动期间自适应地调整混合参数,与恒定参数相比,该方法可实现更有效的控制。 RL的对数间隔状态空间分区用于确保有效学习。集成的视觉伺服控制系统已通过多个实验验证,这些实验涉及轮式移动机器人以所需配置到达目标。仿真和实验结果表明,该方法具有比其他方法更快的收敛速度。

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