EDGE DETECTION BASED ON DECISION-LEVEL INFORMATION FUSION AND ITS APPLICATION IN HYBRID IMAGE FILTERING (MA-P2)
Author(s) :
Jia Li (Oakland University, USA)
Xiaojun Jing (Beijing University of Posts and Telecommunications, China)
Abstract : A new edge detection method based on decision-level information fusion is proposed to classify image pixels into edge and non-edge categories. Traditional edge detection algorithms make detection decision under a single criterion, which may perform inefficiently with the change of noise model. We use fusion entropy as a criterion to integrate decisions from different classifiers in order to improve the edge detection accuracy. The proposed decision fusion based edge detection method is applied to image filtering and leads to a weighted hybrid-filtering algorithm. Simulation results show that the new edge detection method has better performance than the single criterion edge detection methods.

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