Title :
Uncalibrated visual servo control with neural network
Author :
Rok Klobuear;Jure Cas;Riko Safaric
Author_Institution :
Faculty of Electrical Engineering and Computer Science / Institute for Robotics, University of Maribor, Slovenia
Abstract :
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.
Keywords :
"Servosystems","Neural networks","Robot kinematics","Manipulators","Servomechanisms","Multi-layer neural network","Robot vision systems","Cameras","Calibration","End effectors"
Conference_Titel :
Advanced Motion Control, 2008. AMC ´08. 10th IEEE International Workshop on
Print_ISBN :
978-1-4244-1702-5
Electronic_ISBN :
1943-6580
DOI :
10.1109/AMC.2008.4516044