English

SSL4SAR: Self-Supervised Learning for Glacier Calving Front Extraction from SAR Imagery

Computer Vision and Pattern Recognition 2025-07-03 v1

Abstract

Glaciers are losing ice mass at unprecedented rates, increasing the need for accurate, year-round monitoring to understand frontal ablation, particularly the factors driving the calving process. Deep learning models can extract calving front positions from Synthetic Aperture Radar imagery to track seasonal ice losses at the calving fronts of marine- and lake-terminating glaciers. The current state-of-the-art model relies on ImageNet-pretrained weights. However, they are suboptimal due to the domain shift between the natural images in ImageNet and the specialized characteristics of remote sensing imagery, in particular for Synthetic Aperture Radar imagery. To address this challenge, we propose two novel self-supervised multimodal pretraining techniques that leverage SSL4SAR, a new unlabeled dataset comprising 9,563 Sentinel-1 and 14 Sentinel-2 images of Arctic glaciers, with one optical image per glacier in the dataset. Additionally, we introduce a novel hybrid model architecture that combines a Swin Transformer encoder with a residual Convolutional Neural Network (CNN) decoder. When pretrained on SSL4SAR, this model achieves a mean distance error of 293 m on the "CAlving Fronts and where to Find thEm" (CaFFe) benchmark dataset, outperforming the prior best model by 67 m. Evaluating an ensemble of the proposed model on a multi-annotator study of the benchmark dataset reveals a mean distance error of 75 m, approaching the human performance of 38 m. This advancement enables precise monitoring of seasonal changes in glacier calving fronts.

Keywords

Cite

@article{arxiv.2507.01747,
  title  = {SSL4SAR: Self-Supervised Learning for Glacier Calving Front Extraction from SAR Imagery},
  author = {Nora Gourmelon and Marcel Dreier and Martin Mayr and Thorsten Seehaus and Dakota Pyles and Matthias Braun and Andreas Maier and Vincent Christlein},
  journal= {arXiv preprint arXiv:2507.01747},
  year   = {2025}
}

Comments

in IEEE Transactions on Geoscience and Remote Sensing. arXiv admin note: text overlap with arXiv:2501.05281

R2 v1 2026-07-01T03:43:18.354Z