Abstract
This paper presents a cognitive robotics model for the study of the embodied representation of action words. The present research will present how an iCub humanoid robot can learn the meaning of action words (i.e. words that represent dynamical events that happen in time) by physically interacting with the environment and linking the effects of its own actions with the behavior observed on the objects before and after the action. The control system of the robot is an artificial neural network trained to manipulate an object through a Back-Propagation-Through-Time algorithm. We will show that in the presented model the grounding of action words relies directly to the way in which an agent interacts with the environment and manipulates it.
DOI
10.3389/fnbot.2010.00007
Publication Date
2010-01-01
Publication Title
Front Neurorobot
Volume
4
Organisational Unit
School of Engineering, Computing and Mathematics
Recommended Citation
Marocco, D., Cangelosi, A., Fischer, K., & Belpaeme, T. (2010) 'Grounding Action Words in the Sensorimotor Interaction with the World: Experiments with a Simulated iCub Humanoid Robot.', Front Neurorobot, 4. Available at: https://doi.org/10.3389/fnbot.2010.00007