ARTMAP-FD: Familiarity Discrimination Applied to Radar Target Recognition
نویسندگان
چکیده
ARTMAP-FD extends fuzzy A R T M A P t o perform famaliarity discrimination. That is , the network learns to abstain from meaningless guesses on patterns not belonging to a class represented in the training set. ARTMAP-FD can also be applied in conjunction with sequential evidence accumulation. Its performance is illustrated here on simulated radar range profile data .
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