A bioinspired adaptive model, developed by means of a spiking neural network made of thousands of artificial neurons, has been leveraged to control a humanoid NAO robot in real time. The learning properties of the system have been challenged in a classic cerebellum-driven paradigm, a perturbed upper limb reaching protocol. The neurophysiological principles used to develop the model succeeded in driving an adaptive motor control protocol with baseline, acquisition, and extinction phases. The spiking neural network model showed learning behaviours similar to the ones experimentally measured with human subjects in the same task in the acquisition phase, while resorted to other strategies in the extinction phase. The model processed in real-tim...
AbstractThe cerebellum plays an essential role in adaptive motor control. Once we are able to build ...
The cerebellum is essential for motor learning and adaptation since it can change the relationship b...
In this paper, a model of cerebellar function is implemented and evaluated in the control of a robot...
A bioinspired adaptive model, developed by means of a spiking neural network made of thousands of ar...
A bioinspired adaptive model, developed by means of a spiking neural network made of thousands of ar...
The cerebellum has a central role in fine motor control and in various neural processes, as in assoc...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
International audienceWe embed a spiking cerebellar model within an adaptive real-time (RT) control ...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
Edited version embargoed until 12.02.2019 Full version: Access restricted permanently due to 3rd pa...
We present a learning cerebellar model to control reaching movements of a simulated biomimetic manip...
AbstractThe cerebellum plays an essential role in adaptive motor control. Once we are able to build ...
The cerebellum is essential for motor learning and adaptation since it can change the relationship b...
In this paper, a model of cerebellar function is implemented and evaluated in the control of a robot...
A bioinspired adaptive model, developed by means of a spiking neural network made of thousands of ar...
A bioinspired adaptive model, developed by means of a spiking neural network made of thousands of ar...
The cerebellum has a central role in fine motor control and in various neural processes, as in assoc...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
International audienceWe embed a spiking cerebellar model within an adaptive real-time (RT) control ...
The cerebellum is involved in a large number of different neural processes, especially in associativ...
Edited version embargoed until 12.02.2019 Full version: Access restricted permanently due to 3rd pa...
We present a learning cerebellar model to control reaching movements of a simulated biomimetic manip...
AbstractThe cerebellum plays an essential role in adaptive motor control. Once we are able to build ...
The cerebellum is essential for motor learning and adaptation since it can change the relationship b...
In this paper, a model of cerebellar function is implemented and evaluated in the control of a robot...