Correlated Fuzzy Pattern Matching method : a classification method for classes of complex shape
نویسندگان
چکیده
In this paper we propose a new adaptation of the Fuzzy Pattern Matching (FPM) to build a classifier which has a good discrimination ability for classes of non convex shape. We show the limits of the classical FPM. Then we expose some details about the correlated FPM method which we propose. Two other adaptations of the Fuzzy Pattern Matching are described and the results obtained and the results obtained for classes of non convex shape are compared. An application consisting in sorting plastics bottles is proposed for these three methods.
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