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      Computational principles of sensorimotor control that minimize uncertainty and variability.

      The Journal of Physiology
      Algorithms, Animals, Bayes Theorem, Central Nervous System, physiology, Computer Simulation, Humans, Models, Neurological, Proprioception, Psychomotor Performance

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          Abstract

          Sensory and motor noise limits the precision with which we can sense the world and act upon it. Recent research has begun to reveal computational principles by which the central nervous system reduces the sensory uncertainty and movement variability arising from this internal noise. Here we review the role of optimal estimation and sensory filtering in extracting the sensory information required for motor planning, and the role of optimal control, motor adaptation and impedance control in the specification of the motor output signal.

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          Author and article information

          Journal
          17008369
          2075158
          10.1113/jphysiol.2006.120121

          Chemistry
          Algorithms,Animals,Bayes Theorem,Central Nervous System,physiology,Computer Simulation,Humans,Models, Neurological,Proprioception,Psychomotor Performance

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