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引用次数: 67

摘要

提出了一种利用仿射变换的李代数结构实现视觉伺服的新方法。这个项目的目的是利用视觉传感器的反馈来引导机器人手臂到达目标位置。传感器被放置在机器人的末端执行器中,即“手持相机”的方法,从而通过观察到的场景变换,提供相对于目标场景的机器人运动的直接反馈。这些场景变换是通过测量目标平面轮廓的仿射变形来获得的,这些变形是通过使用活动轮廓或蛇来捕获的。利用仿射变换和射影变换的李群约束蛇的变形。利用仿射变换的李代数特性,将观测到的变形整合到目标轮廓上,并利用非线性控制结构用适当的机器人运动进行补偿。这些技术已经实现了使用视频摄像机来控制一个5自由度的机器人手臂。给出了该实现的实验,并对结果进行了讨论。
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Visual tracking and control using Lie algebras
A novel approach to visual servoing is presented, which takes advantage of the structure of the Lie algebra of affine transformations. The aim of this project is to use feedback from a visual sensor to guide a robot arm to a target position. The sensor is placed in the end effector of the robot, the 'camera-in-hand' approach, and thus provides direct feedback of the robot motion relative to the target scene via observed transformations of the scene. These scene transformations are obtained by measuring the affine deformations of a target planar contour, captured by use of an active contour, or snake. Deformations of the snake are constrained using the Lie groups of affine and projective transformations. Properties of the Lie algebra of affine transformations are exploited to integrate observed deformations to the target contour which can be compensated with appropriate robot motion using a non-linear control structure. These techniques have been implemented using a video camera to control a 5 DoF robot arm. Experiments with this implementation are presented, together with a discussion of the results.
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