Cerebellar Input Configuration Toward Object Model Abstraction in Manipulation Tasks
Metadatos
Mostrar el registro completo del ítemAutor
Luque Sola, Niceto Rafael; Garrido Alcázar, Jesús Alberto; Carrillo Sánchez, Richard Rafael; Coenen, Olivier J.-M. D.; Ros Vidal, EduardoMateria
Adaptive biological control system cerebellum architecture learning robot spiking neuron
Fecha
2011-06-23Referencia bibliográfica
Luque, N. R., Garrido, J. A., Carrillo, R. R., Coenen, O. J. M., & Ros, E. (2011). Cerebellar input configuration toward object model abstraction in manipulation tasks. IEEE Transactions on Neural Networks, 22(8), 1321-1328.
Resumen
It is widely assumed that the cerebellum is one of the main nervous centers involved in correcting and refining planned movement and accounting for disturbances occurring during movement, for instance, due to the manipulation of objects which affect the kinematics and dynamics of the robot-arm plant model. In this brief, we evaluate a way in which a cerebellar-like structure can store a model in the granular and molecular layers. Furthermore, we study how its microstructure and input representations (context labels and sensorimotor signals) can efficiently support model abstraction toward delivering accurate corrective torque values for increasing precision during different-object manipulation. We also describe how the explicit (object-related input labels) and implicit state input representations (sensorimotor signals) complement each other to better handle different models and allow interpolation between two already stored models. This facilitates accurate corrections during manipulations of new objects taking advantage of already stored models.





