Home /Research /Learning a repertoire of actions with deep neural networks
LEARNING

Learning a repertoire of actions with deep neural networks

Alain Droniou, Serena Ivaldi, Olivier Sigaud

Year
2014
Citations
29

Abstract

We address the problem of endowing a robot with the capability to learn a repertoire of actions using as little prior knowledge as possible. Taking a handwriting task as an example, we apply the deep learning paradigm to build a network which uses a high-level representation of digits to generate sequences of commands, directly fed to a low-level control loop. Discrete variables are used to discriminate different digits, while continuous variables parametrize each digit. We show that the proposed network is able to generalize learned actions to new contexts. The network is tested on trajectories recorded on the iCub humanoid robot.

Keywords

iCubComputer scienceRepertoireArtificial intelligenceTask (project management)Humanoid robotRepresentation (politics)Deep learningRobotArtificial neural network

Related papers

Browse all LEARNING papers