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6 March 2002 Class-associative multiple-target detection using fringe-adjusted joint transform correlation
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We propose a class-associative correlation filter based technique for detecting a class of objects consisting of dissimilar patterns. The fringe-adjusted joint transform correlation algorithm is utilized to enhance the correlation performance, thus ensuring strong and equal correlation peak for each element of the selected class. For enhanced performance, an enhanced version of the fringe-adjusted filter is incorporated in the class-associative multiple target detection process. The feasibility of the proposed technique has been tested by computer simulation.
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Mohammad S. Alam and Mohammed Moseeur Rahman "Class-associative multiple-target detection using fringe-adjusted joint transform correlation", Proc. SPIE 4734, Optical Pattern Recognition XIII, (6 March 2002);

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