Extending global-local view alignment for self-supervised learning with remote sensing imagery

12 Mar 2023  ·  Xinye Wanyan, Sachith Seneviratne, Shuchang Shen, Michael Kirley ·

Since large number of high-quality remote sensing images are readily accessible, exploiting the corpus of images with less manual annotation draws increasing attention. Self-supervised models acquire general feature representations by formulating a pretext task that generates pseudo-labels for massive unlabeled data to provide supervision for training. While prior studies have explored multiple self-supervised learning techniques in remote sensing domain, pretext tasks based on local-global view alignment remain underexplored, despite achieving state-of-the-art results on natural imagery. Inspired by DINO, which employs an effective representation learning structure with knowledge distillation based on global-local view alignment, we formulate two pretext tasks for self-supervised learning on remote sensing imagery (SSLRS). Using these tasks, we explore the effectiveness of positive temporal contrast as well as multi-sized views on SSLRS. We extend DINO and propose DINO-MC which uses local views of various sized crops instead of a single fixed size in order to alleviate the limited variation in object size observed in remote sensing imagery. Our experiments demonstrate that even when pre-trained on only 10% of the dataset, DINO-MC performs on par or better than existing state-of-the-art SSLRS methods on multiple remote sensing tasks, while using less computational resources. All codes, models, and results are released at https://github.com/WennyXY/DINO-MC.

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Results from the Paper


 Ranked #1 on Multi-Label Image Classification on BigEarthNet-10% (using extra training data)

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Multi-Label Image Classification BigEarthNet DINO-MC mAP (micro) 88.75 # 5
official split No # 1
Multi-Label Image Classification BigEarthNet-10% DINO-MC mean average precision 84.20 # 1
Image Classification EuroSAT DINO-MC (WRN linear eval)) Accuracy (%) 95.7 # 12
Image Classification EuroSAT DINO-MC (Wide ResNet) Accuracy (%) 98.78 # 6
Change Detection OSCD - 13ch DINO-MC (WRN-50) Precision 49.99 # 3
F1 52.7 # 3

Methods