Authors:
B. Alsahwa
1
;
S. Almouahed
2
;
D. Guériot
1
and
B. Solaiman
1
Affiliations:
1
Telecom Bretagne, Institut Mines-Télécom and Institut Mines-Télécom-Télécom Bretagne-UE, France
;
2
Telecom Bretagne and Institut Mines-Télécom, France
Keyword(s):
Possibility Theory, Classification, Contextual Information, a Priori Knowledge, Possibilistic Similarity.
Related
Ontology
Subjects/Areas/Topics:
Classification
;
Pattern Recognition
;
Similarity and Distance Learning
;
Theory and Methods
Abstract:
In this study, an approach for image classification based on possibilistic similarity is proposed. This approach, due to the use of possibilistic concepts, enables an important flexibility to integrate both contextual information and a priori knowledge. Possibility distributions are, first, obtained using a priori knowledge given in the form of learning areas delimitated by an expert. These areas serve for the estimation of the probability density functions of different thematic classes. The resulting probability density functions are then transformed into possibility distributions using Dubois-Prade’s probability-possibility transformation. Several measures of similarity between classes were tested in order to improve the discrimination between classes. The classification is then performed based on the principle of possibilistic similarity. Synthetic and real images are used in order to evaluate the performances of the proposed model.