特征位置未知的眼手机器人视觉伺服

Beixian Lai, Zhiwen Li, Weibing Li, Yongping Pan
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引用次数: 0

摘要

视觉伺服可以利用视觉反馈信息对机器人进行有效控制,提高机器人的智能性和可靠性。在现有的基于动态图像的视觉伺服方法中,为了实现像素误差收敛,特征点的数量不大于3个是限制条件,这使得在一个平面上至少需要4个特征点才能确定唯一的末端执行器位姿,从而难以实现三维位姿控制。提出了一种基于动态自适应同形图的视觉伺服控制器(HBVS),用于在特征位置未知但不变的情况下,将手眼单目摄像机机器人控制到期望姿态。将不确定深度表示为其位置参数在笛卡尔空间中的线性形式,并采用复合学习技术保证了区间激励条件下的参数收敛性,实现了精确的深度估计和三维位姿调节。在一个名为Franka Emika Panda的7自由度协作机器人上的实验证明了所提出方法的有效性。
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Homography-Based Visual Servoing for Eye-in-Hand Robots with Unknown Feature Positions
Visual servoing can effectively control robots using visual feedback information to improve the intelligence and reliability. In most existing dynamics-based image-based visual servoing methods, a restricted condition that the number of the feature points is no larger than 3 is needed to achieve pixel error convergence, which makes them difficlut to achieve three-dimensional (3-D) pose control since at least 4 feature points on a plane are needed to determine the unique end-effector pose. This paper puts forward to a dynamics-based adaptive homography-based visual servoing (HBVS) controller to regulate robot manipulators with eye-in-hand monocular cameras to the desired pose under unknown but constant feature positions. The uncertain depth is represented as a linear form of its position parameters in the Cartesian space, and a composite learning technique is applied to guarantee parameter convergence under a much weaker condition of interval excitation than persistent excitation, resulting in exact depth estimation and 3-D pose regulation. Experiments on a collaborative robot with 7 degrees of freedom named Franka Emika Panda have illustrated the effectiveness of the proposed method.
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