High-level fusion based on conceptual graphs

Most of studies in the field of information fusion focus on the production of high-level information from low-level data. The challenge is then to fuse this high-level information to produce a global and coherent information. Another approach consists in interpreting data as high-level information and fuse it at once. Our approach relies on the use of conceptual graphs model. The model is widely used for knowledge representation. We propose to go further and use it for information fusion. Conceptual graphs model contains aggregation operators such as join and maximal join. This paper is dedicated to the extension of the maximal join operator in order to manage heterogeneous information fusion. After describing the suitability of maximal join for high-level information fusion, we present the extension that we propose. The extension relies on relaxing the equality constraint on observations and on using fusion strategies. A case study illustrates our proposition.

[1]  Alexander F. Gelbukh,et al.  Text Mining at Detail Level Using Conceptual Graphs , 2002, ICCS.

[2]  Kenneth Baclawski,et al.  A core ontology for situation awareness , 2003, Sixth International Conference of Information Fusion, 2003. Proceedings of the.

[3]  Leif Persson,et al.  Underwater target tracking by means of acoustic and electromagnetic data fusion , 2006, 2006 9th International Conference on Information Fusion.

[4]  Mbarek Charhad Modèles de documents vidéos basés sur le formalisme des graphes conceptuels pour l'indexation et la recherche par le contenu sémantique , 2005 .

[5]  Usman Ali,et al.  Optimized Visual and Thermal Image Fusion for Efficient Face Recognition , 2006, 2006 9th International Conference on Information Fusion.

[6]  John F. Sowa,et al.  Conceptual Structures: Information Processing in Mind and Machine , 1983 .

[7]  R.S. Blum Minimax robust image fusion using an estimation theory approach , 2005, 2005 7th International Conference on Information Fusion.

[8]  John T. Rickard Level 2/3 fusion in conceptual spaces , 2006, 2006 9th International Conference on Information Fusion.

[9]  Philippe Mulhem,et al.  Fuzzy Conceptual Graphs for Matching Images of Natural Scenes , 2001, IJCAI.

[10]  Brian P. Kettler,et al.  The Concept Object Web for Knowledge Management , 2005, SEMWEB.

[11]  F. Volota,et al.  Knowledge and Data Representation with Conceptual Graphs for Biomedical Information Processing: a Review , 2004 .

[12]  M Fieschi,et al.  Review of biomedical knowledge and data representation with conceptual graphs. , 1998, Methods of information in medicine.

[13]  Olivier Gerbé,et al.  Using Conceptual Graphs for Methods Metamodeling , 1996 .