Publication | Open Access
Optimal Sensorimotor Integration in Recurrent Cortical Networks: A Neural Implementation of Kalman Filters
134
Citations
53
References
2007
Year
Neural RecodingMotor ControlKalman FiltersRecurrent Neural NetworkSocial SciencesKalman FilterState EstimationKinesiologyNeurodynamicsRecurrent Cortical NetworksRobot LearningHealth SciencesSensorimotor ControlCognitive ScienceOptimal Sensorimotor IntegrationSensorimotor IntegrationNervous SystemAttractor DynamicsComputational NeuroscienceSensorimotor TransformationMotor SystemNeuronal NetworkNeuroscienceBrain Modeling
Several behavioral experiments suggest that the nervous system uses an internal model of the dynamics of the body to implement a close approximation to a Kalman filter. This filter can be used to perform a variety of tasks nearly optimally, such as predicting the sensory consequence of motor action, integrating sensory and body posture signals, and computing motor commands. We propose that the neural implementation of this Kalman filter involves recurrent basis function networks with attractor dynamics, a kind of architecture that can be readily mapped onto cortical circuits. In such networks, the tuning curves to variables such as arm velocity are remarkably noninvariant in the sense that the amplitude and width of the tuning curves of a given neuron can vary greatly depending on other variables such as the position of the arm or the reliability of the sensory feedback. This property could explain some puzzling properties of tuning curves in the motor and premotor cortex, and it leads to several new predictions.
| Year | Citations | |
|---|---|---|
Page 1
Page 1