Self-supervised pre-training enhances change detection in Sentinel-2 imagery

20 Jan 2021  ·  Marrit Leenstra, Diego Marcos, Francesca Bovolo, Devis Tuia ·

While annotated images for change detection using satellite imagery are scarce and costly to obtain, there is a wealth of unlabeled images being generated every day. In order to leverage these data to learn an image representation more adequate for change detection, we explore methods that exploit the temporal consistency of Sentinel-2 times series to obtain a usable self-supervised learning signal. For this, we build and make publicly available (https://zenodo.org/record/4280482) the Sentinel-2 Multitemporal Cities Pairs (S2MTCP) dataset, containing multitemporal image pairs from 1520 urban areas worldwide. We test the results of multiple self-supervised learning methods for pre-training models for change detection and apply it on a public change detection dataset made of Sentinel-2 image pairs (OSCD).

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Datasets


Results from the Paper


Ranked #5 on Change Detection on OSCD - 13ch (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Change Detection OSCD - 13ch Task 2 CVA+Triangle Precision 40.42 # 5
F1 45.79 # 5
Change Detection OSCD - 13ch Task 2 linear Precision 46.3 # 4
F1 43.17 # 6

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