基于神经网络的无标定视觉伺服控制

R. Klobučar, J. Cas, R. Šafarič
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引用次数: 10

摘要

机器人视觉伺服系统的研究是机器人领域的重要内容。本文介绍了一种机器人机械臂的控制方法。本文将多层前馈网络应用于机器人视觉伺服控制问题。该模型采用了一种新的神经网络结构和一种新的神经连接强度修正算法。机器人运动学和摄像机标定不需要先验知识。该网络使用末端执行器位置进行训练。训练后,通过让网络生成任意末端执行器轨迹的关节角来衡量性能。采用2自由度并联机械臂进行研究。人们发现神经网络提供了一种简单有效的控制机器人任务的方法。本文探讨了应用神经网络逼近机器人尖端位置从图像坐标到关节坐标的非线性变换。给出了实际的实验实例,说明了该方法的意义。实验结果与一种类似的无标定视觉伺服控制方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncalibrated visual servo control with neural network
Research into robotics visual servo systems is an important content in the robotics field. This paper describes a control approach for a robotics manipulator. In this paper, a multilayer feedforward network is applied to a robot visual servo control problem. The model uses a new neural network architecture and a new algorithm for modifying neural connection strength. No a-prior knowledge is required of robot kinematics and camera calibration. The network is trained using an end- effector position. After training, performance is measured by having the network generate joint-angles for arbitrary end effector trajectories. A 2-degrees-of-freedom (DOF) parallel manipulator was used for the study. It was discovered that neural networks provide a simple and effective way of controlling robotic tasks. This paper explores the application of a neural network for approximating nonlinear transformation relating to the robot's tip-position, from the image coordinates to its joint coordinates. Real experimental examples are given to illustrate the significance of this method. Experimental results are compared with a similar method called the Broyden method, for uncalibrated visual servo- control.
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