6533b82ffe1ef96bd1295b7d
RESEARCH PRODUCT
Imitation Learning and Anchoring through Conceptual Spaces
Ignazio InfantinoAntonio ChellaHaris Dindosubject
Cognitive scienceSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniComputer sciencebusiness.industrymedia_common.quotation_subjectRepresentation (systemics)AnchoringCognitive architectureHUMAN ARM MOVEMENTS; SYSTEM; TIMERobotics Imitation LearningArtificial IntelligenceSimple (abstract algebra)Order (business)PerceptionArtificial intelligenceCognitive imitationImitationbusinessmedia_commondescription
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.
year | journal | country | edition | language |
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2007-04-25 |