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Dynamic visual servo control of robots: An adaptive image-based approach

机译:机器人的动态视觉伺服控制:一种基于图像的自适应方法

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Sensory systems, such as computer vision, can be used to measure relative robot end-effector positions to derive feedback signals for control of end-effector positioning. The role of vision as the feedback transducer affects closed-loop dynamics, and a visual feedback control strategy is required. Vision-based robot control research has focused on vision processing issues, while control system design has been limited to ad-hoc strategies. We formalize an analytical approach to dynamic robot visual servo control systems by first casting position-based and image-based strategies into classical feedback control structures. The image-based structure represents a new approach to visual servo control, which uses image features (e.g., image areas, and centroids) as feedback control signals, thus eliminating a complex interpretation step (i.e., interpretation of image features to derive world-space coordinates). Image-based control presents formidable engineering problems for controller design, including coupled and nonlinear dynamics, kinematics, and feedback gains, unknown parameters, and measurement noise and delays. A model reference adaptive controller (MRAC) is designed to satisfy these requirements.
机译:诸如计算机视觉之类的感觉系统可用于测量机器人末端执行器的相对位置,以导出用于控制末端执行器定位的反馈信号。视觉作为反馈传感器的作用会影响闭环动力学,因此需要视觉反馈控制策略。基于视觉的机器人控制研究集中于视觉处理问题,而控制系统的设计仅限于即席策略。我们首先将基于位置和基于图像的策略铸造为经典的反馈控制结构,从而形成了一种针对动态机器人视觉伺服控制系统的分析方法。基于图像的结构代表了一种视觉伺服控制的新方法,该方法使用图像特征(例如,图像区域和质心)作为反馈控制信号,从而消除了复杂的解释步骤(即,解释图像特征以导出世界空间)坐标)。基于图像的控制为控制器设计提出了巨大的工程问题,包括耦合和非线性动力学,运动学,反馈增益,未知参数以及测量噪声和延迟。设计了模型参考自适应控制器(MRAC)来满足这些要求。

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