4 CONCLUSIONS
This work presented and evaluated a Radial Basis
Function Network based approach to image catego-
rization and annotation. Experimental analysis con-
firms that the proposed solution can be employed for
both categorization and annotation tasks with encour-
aging results. The proposed soft classification ap-
proach seems promising and adequate for the man-
agement of intrinsic uncertainty of user-provided an-
notations. Future works involve the investigation of
the performance on larger datasets with more images
and annotations to assess the impact on the model’s
behavior.
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