Cerebellar Spiking Engine: Towards Objet Model Abstraction in Manipulation
Metadatos
Mostrar el registro completo del ítemAutor
Luque Sola, Niceto Rafael; Garrido Alcázar, Jesús Alberto; Carrillo Sánchez, Richard Rafael; Ros Vidal, EduardoMateria
Spiking neuron Cerebellum Adaptive Simulation Learning, Robot Biological Control Systems
Fecha
2010-10-14Referencia bibliográfica
Luque, N. R., Garrido, J. A., Carrillo, R. R., & Ros, E. (2010, July). Cerebellar spiking engine: Towards objet model abstraction in manipulation. In The 2010 International Joint Conference on Neural Networks (IJCNN) (pp. 1-8). IEEE.
Resumen
This paper presents how a plausible cerebellum-like architecture can abstract corrective models in the framework of a robot control task when manipulating objects that significantly affect the dynamics of the system. The presented scheme is adequate to control non-stiff-joint robots with low-power actuators which involve controlling systems with high inertial components. We evaluate the way in which the cerebellum stores a model in the granule layer, how its microstructure can efficiently abstract models and deliver accurate corrective torques for increasing precision during object manipulation. Particularly we study how input sensory-motor representations can enhance model abstraction capabilities during accurate movements, making use of explicit (model-related input labels) and implicit model representations (sensory signals). Finally we focus on how our cerebellum model (using a temporal correlation kernel) properly deals with transmission delays in sensory-motor pathways.





