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Implementation of self-organizing neural networks for visuo-motor control of an industrial robot

J. Walter, Klaus Schulten

发表年份
1993
引用次数
189

摘要

The implementation of two neural network algorithms for visuo-motor control of an industrial robot (Puma 562) is reported. The first algorithm uses a vector quantization technique, the ;neural-gas' network, together with an error correction scheme based on a Widrow-Hoff-type learning rule. The second algorithm employs an extended self-organizing feature map algorithm. Based on visual information provided by two cameras, the robot learns to position its end effector without an external teacher. Within only 3000 training steps, the robot-camera system is capable of reducing the positioning error of the robot's end effector to approximately 0.1% of the linear dimension of the work space. By employing adaptive feedback the robot succeeds in compensating not only slow calibration drifts, but also sudden changes in its geometry. Hardware aspects of the robot-camera system are discussed.

关键词

RobotComputer scienceArtificial neural networkArtificial intelligenceRobot end effectorComputer visionRobot controlMobile robot

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