Publication Date:
2007
abstract:
In order to have a robotic system able to effectively learn by imitation and not merely reproduce
the movements of a human teacher, the system should have the capability to deeply understand the
perceived actions to be imitated. This paper deals with the development of a cognitive architecture
for learning by imitation in which a rich conceptual representation of the observed actions is built.
The purpose of the following discussion is to show how the same conceptual representation can be
used both in a bottom-up approach, in order to learn sequences of actions by imitation learning
paradigm, and in a top-down approach, in order to anchor the symbolical representations to the
perceptual activities of the robotic system. Experiments concerned with the problem of teaching a
humanoid robotic system simple manipulative tasks are reported.
Iris type:
01.01 Articolo in rivista
Keywords:
HUMAN ARM MOVEMENTS; SYSTEM; TIME
List of contributors:
Infantino, Ignazio
Published in: