Fuzzy classification for multi-modality image fusion

In the framework of fuzzy set theory, we propose: (i) a classification scheme for multi-modality image fusion, where membership degrees to a class issued from several images are combined before taking a decision, (ii) a classification of fusion operators, depending on their behaviour.<<ETX>>

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