An Ontology-based Multi-level Robot Architecture for Learning from Experiences

Abstract

One way to improve the robustness and flexibility of robot performance is to let the robot learn from its experiences. In this paper, we describe the architecture and knowledge-representation framework for a service robot being developed in the EU project RACE, and present examples illustrating how learning from experiences will be achieved. As a unique innovative feature, the framework combines memory records of low-level robot activities with ontology-based high-level semantic descriptions.

Publication
In AAAI Spring Symposium 2013 on Designing Intelligent Robots: Reintegrating AI II.
Date
Links
PDF