Título:
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Sensory-motor neural loop discovering statistical dependences among imperfect sensory perception and motor response
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Autores:
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Makarov, Valeri A. ;
Castellanos, Nazareth P. ;
Patane, Luca ;
Velarde, Manuel G.
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Tipo de documento:
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texto impreso
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Editorial:
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Spie-Int Soc Optical Engineering, 2007
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Palabras clave:
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Estado = Publicado
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Materia = Ciencias: Informática: Programación de ordenadores
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Tipo = Sección de libro
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Resumen:
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Common design of a robot searching for a target emitting sensory stimulus (e.g. odor or sound) makes use of the gradient of the sensory intensity. However, the intensity may decay rapidly with distance to the source, then weak signal-to-noise ratio strongly limits the maximal distance at which the robot performance is still acceptable. We propose a simple deterministic platform for investigation of the searching problem in an uncertain environment with low signal to noise ratio. The robot sensory layer is given by a differential sensor capable of comparing the stimulus intensity between two consecutive steps. The sensory output feeds the motor layer through two parallel sensory-motor pathways. The first "reflex" pathway implements the gradient strategy, while the second "integrating" pathway processes sensory information by discovering statistical dependences and eventually correcting the results of the first fast pathway. We show that such parallel sensory information processing allows greatly improve the robot performance outside of the robot safe area with high signal to noise ratio.
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