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INTEGRATING NEUROMORPHIC ACTION-ORIENTED PERCEPTUAL INPUTS TO GENERATE A NAVIGATION BEHAVIOUR FOR A ROBOT

Regina Mudra, Richard H. R. Hahnloser, Rodney J. Douglas

发表年份
1999
引用次数
2

摘要

We use neural networks with pointer map architectures to provide simple attentional processing in a robotic task. A pointer map comprises a map of neurons that encode a stimulus. Besides global feedback inhibition, the map receives feedback excitation via a small group of pointer neurons that encode the location of a salient stimulus on the map as a vectorial representation. The pointer neurons are able to apply selective processing to a particular region of the network. The robot uses these properties to manoeuver in relation to an attended object. We implemented a controller composed of two pointer maps, and a motor map. The first pointer map reports the direction of a salient obstacle in a one-dimensional map of distance derived from infrared sensors. The second pointer map reports the direction to potential obstacles in a two-dimensional edge-enhanced image derived from a forward looking CCD-camera. These outputs are applied to a motor map, where they bias the motor control signals issued to the robots wheels, according to navigational intentions.

关键词

Pointer (user interface)Computer scienceArtificial intelligenceNeuromorphic engineeringComputer visionRobotENCODESalientPerceptionArtificial neural network

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