Journal Title
Title of Journal: Memetic Comp
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Abbravation: Memetic Computing
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Publisher
Springer Berlin Heidelberg
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Authors: Hao Li Jingjing Ma Maoguo Gong Qiongzhi Jiang Licheng Jiao
Publish Date: 2015/07/14
Volume: 7, Issue: 4, Pages: 275-289
Abstract
This paper presents an unsupervised change detection approach for synthetic aperture radar SAR images based on a multiobjective clustering algorithm and selective ensemble strategy A multiobjective clustering method based on the nondominated neighbor immune algorithm is proposed for classifying changed and unchanged regions in the difference image which aims at reducing the effect of speckle noise and enhancing the cluster performance The proposed multiobjective clustering method generates a set of mutually intermediate clustering solutions which correspond to different tradeoffs between the two objectives restraining noise and preserving detail Then the selective ensemble strategy is introduced to integrated theses intermediate change detection results Experiments on real SAR images show that the proposed change detection method based on multiobjective clustering reduces the effect of speckle noise and enhancing the cluster performance In general the proposed method makes a balance between noiseimmunity and the preservation of image detail The final change detection results obtained by the selective ensemble strategy exhibit lower errors than other existing methods
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