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Fully Convolutional Siamese Networks for Change Detection

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This paper presents three fully convolutional neural network architectures which perform change detection using a pair of coregistered images. Most notably, we propose two Siamese extensions of fully convolutional networks which use heuristics about the current problem to achieve the best results in our tests on two open change detection datasets, using both RGB and multispectral images. We show that our system is able to learn from scratch using annotated change detection images. Our architectures achieve better performance than previously proposed methods, while being at least 500 times faster than related systems. This work is a step towards efficient processing of data from large scale Earth observation systems such as Copernicus or Landsat.

Rodrigo Caye Daudt, Bertrand Le Saux, Alexandre Boulch• 2018

Related benchmarks

TaskDatasetResultRank
Change DetectionLEVIR-CD (test)
F1 Score89.89
485
Change DetectionWHU-CD (test)
IoU84.1
372
Change DetectionLEVIR-CD
F1 Score89.02
232
Change DetectionWHU-CD
IoU81.75
202
Change DetectionCDD (test)
F1 Score72.65
88
Change DetectionSYSU-CD (test)
F175.81
79
Change DetectionDSIFN-CD (test)
F1 Score67.68
70
Change DetectionS2Looking (test)
F1 Score13.54
69
Change DetectionLEVIR+-CD (test)
F1 Score79.23
62
Change DetectionLEVIR
F1 Score81.8
62
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