Change-Aware Sampling and Contrastive Learning for Satellite Images
收藏NIAID Data Ecosystem2026-05-01 收录
下载链接:
https://zenodo.org/record/10913173
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Change-Aware Sampling and Contrastive Learning for Satellite Images
The 1 million sized dataset in compressed format.
This dataset is split in 4 parts due to Zenodo's size restictions.
Each part can be downloaded using the following link.
Part 1: https://zenodo.org/records/10913216
Part 2: https://zenodo.org/records/10914902
Part 3: https://zenodo.org/uploads/10915715
Part 4: https://zenodo.org/records/10916979
Use the following commands to combine and extract the compressed file.
cat clean_1m_geography_part* > clean_1m_geography.tar.gz
tar -xvf clean_1m_geography.tar.gz
Paper Abstract
Automatic remote sensing tools can help inform many large-scale challenges such as disaster management, climate change, etc. While a vast amount of spatio-temporal satellite image data is readily available, most of it remains unlabelled. Without labels, this data is not very useful for supervised learning algorithms. Self-supervised learning instead provides a way to learn effective representations for various downstream tasks without labels. In this work, we leverage characteristics unique to satellite images to learn better self-supervised features. Specifically, we use the temporal signal to contrast images with long-term and short-term differences, and we leverage the fact that satellite images do not change frequently. Using these characteristics, we formulate a new loss contrastive loss called Change-Aware Contrastive (CACo) Loss. Further, we also present a novel method of sampling different geographical regions. We show that leveraging these properties leads to better performance on diverse downstream tasks. For example, we see a 6.5% relative improvement for semantic segmentation and an 8.5% relative improvement for change detection over the best-performing baseline with our method.
创建时间:
2024-04-04



