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Perception / Cognitive neuroscience / Sensory systems / Analog circuits / Cognition / Motion perception / Neural adaptation / RC circuit / Control theory / Passive integrator circuit / Receptive field / Biological motion perception
Date: 2013-05-14 10:28:57
Perception
Cognitive neuroscience
Sensory systems
Analog circuits
Cognition
Motion perception
Neural adaptation
RC circuit
Control theory
Passive integrator circuit
Receptive field
Biological motion perception

Modelling Adaptation to Directional Motion Using the Adelson-Bergen Energy Sensor Andrea Pavan1,2*, Adriano Contillo1,3, George Mather4 1 SISSA, Trieste, Italy, 2 Institut fu¨r Psychologie, Universita¨t Regensburg, Reg

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