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, Image 1. (b) Image 2. (c) Vérité terrain

(. , (f) FC-Siam-conc. (g) FC-Siam-diff

, FIGURE 5 ? Comparaison entre les résultats obtenus par la méthode présentée dans [12] (d) et ceux décrits dans cet article (e-g) sur l'image Szada

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