Supervised and Self-Supervised Land-Cover Segmentation & Classification of the Biesbosch Wetlands

Open Access
Authors
  • Eva Gmelich Meijling
  • Roberto Del Prete
  • A. Visser ORCID logo
Publication date 27-05-2025
Event the Netherlands Conference on Computer Vision
Number of pages 11
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
  • Faculty of Science (FNWI)
Abstract
Accurate wetland land-cover classification is essential for environmental monitoring, biodiversity assessment, and sustainable ecosystem management. However, the scarcity of annotated data, especially for high-resolution satellite imagery, poses a significant challenge for supervised learning approaches. To tackle this issue, this study presents a methodology for wetland land-cover segmentation and classification that adopts both supervised and self-supervised learning (SSL). We train a U-Net model from scratch on Sentinel-2 imagery across six wetland regions in the Netherlands, achieving a baseline model accuracy of 85.26%.
Addressing the limited availability of labeled data, the results show that SSL pretraining with an autoencoder can improve accuracy, especially for the high-resolution imagery where it is more difficult to obtain labeled data, reaching an accuracy of 88.23%.
Furthermore, we introduce a framework to scale manually annotated high-resolution labels to medium-resolution inputs. While the quantitative performance between resolutions is comparable, high-resolution imagery provides significantly sharper segmentation boundaries and finer spatial detail.
As part of this work, we also contribute a curated Sentinel-2 dataset with Dynamic World labels, tailored for wetland classification tasks and made publicly available.
Document type Paper
Language English
Published at https://doi.org/10.48550/arXiv.2505.21269
Other links https://doi.org/10.5281/zenodo.15125549
Downloads
2505.21269v1 (Final published version)
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