Symbol Grounding for Semantic Image Interpretation : From Image Data to Semantics


LES AUTEURS / Celine Hudelot, Nicolas Maillot and Monique Thonnat

RESUME:

This paper presents an original approach for the symbol grounding problem involved in semantic image interpretation, i.e. the problem of
the mapping between image data and semantic data. Our approach involves the following aspects of cognitive vision : knowledge
acquisition and knowledge representation, reasoning and machine learning. The symbol grounding problem is considered as a problem as
such and we propose an independent cognitive system dedicated to symbol grounding. This symbol grounding system introduces an
intermediate layer between the semantic interpretation problem (reasoning in the semantic level) and the image processing problem. An
important aspect of the work concerns the use of two ontologies to make easier the communication between the different layers : a visual
concept ontology and an image processing ontology.  We use two approaches to solve the symbol grounding problem: a machine learning approach and an a priori knowledge based approach.

Mots clé: Semantic Image Interpretation, Symbol Grounding. A priori Knowledge, Machine Learning, Ontology

Pour télécharger cet article,  cliquez ici


BibTeX reference:

 
@INPROCEEDINGS{hudelot05,
AUTHOR = {Hudelot, C and Maillot, N.  and Thonnat,
M.},
TITLE = {Symbol Grounding for Semantic Image
Interpretation : from Image Data to Semantics},
booktitle = {Proceedings of  the Workshop on Semantic Knowledge in
Computer Vision, ICCV },
year = {2005},
address = {Beijing, China}
}

Dernière mise à jour : 10/11/05
Catherine.Martin@sophia.inria.fr