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Articles

Change detection in very high-resolution images based on ensemble CNNs

, , , &
Pages 4757-4779 | Received 17 Sep 2019, Accepted 17 Dec 2019, Published online: 02 Mar 2020
 

ABSTRACT

This paper presents a novel change detection method for very-high-resolution images based on deep learning. In the method, an ensemble CNN change detection framework is proposed. Different from other deep learning change detection methods, samples of changed and unchanged regions of two very-high-resolution images acquired at different times are fed into two CNN. The discriminative deep metric learning based on dissimilarity degree is used to adjust discriminative distance metric of two CNN output layers quantitatively, under which the distance of unchanged samples becomes smaller and that of changed samples becomes higher, respectively. During its training procedure, cost module function based on dissimilarity degree of samples is used to train the ensemble CNN and high-level and abstract features of changed and unchanged pair of samples are driven to learn by the proposed framework. After training, the discriminative distance of unchanged samples becomes smaller and that of changed samples becomes larger. The proposed method justifies the changed and unchanged area of original images and change detection results can be obtained. Experiments on real datasets and theoretical analysis validate the effectiveness and superiority of the proposed method.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work was supported byNational key research and development program of China [No.2017YFB0503005]; National Natural Science Foundation of China [No.41771388].

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