Sensori-motor networks vs neural networks for visual stimulus prediction

ICDL-EPIROB(2014)

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摘要
This paper focuses on a recently developed special type of biologically inspired architecture, which we denote as a sensori-motor network, able to co-develop sensori-motor structures directly from the data acquired by a robot interacting with its environment. Such networks learn efficient internal models of the sensori-motor system, developing simultaneously sensor and motor representations (receptive fields) adapted to the robot and surrounding environment. In this paper we compare this sensori-motor network with a conventional neural network in the ability to create efficient predictors of visuomotor relationships. We confirm that the sensori-motor network is significantly more efficient in terms of required computations and is more precise (less prediction error) than the linear neural network in predicting self induced visual stimuli.
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关键词
control engineering computing,data acquisition,human-robot interaction,neural net architecture,robot vision,visual perception,biologically inspired architecture,linear neural network,neural networks,robot interaction,self induced visual stimuli,sensor and motor representation,sensorimotor networks,sensorimotor structures,visual stimulus prediction,visuomotor relationship,stimulus prediction,sensori-motor maps,visual and motor receptive fields
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