Applying U-Net for Estimating AVHRR-Based Snow Cover Fraction (ESA CCI+ Snow) During Cloud Cover and Polar Night in Scandinavia
Highlights
- A U-Net trained on a single year reconstructs AVHRR-based snow cover fraction (SCF) across Scandinavia with R2 = 0.9342 and RMSE = 0.1127, outperforming spatial, physical, and pixel-wise machine learning baselines.
- Independent ground station validation yields 86.7% accuracy and F1 = 88.0%, matching the quality of the ESA CCI L3C SCFV AVHRR v4.0 product in real observational gaps.
- Physically meaningful predictors (snow water equivalent, temperature, elevation, land cover) enable continuous, cloud- and polar-night-robust SCF reconstruction without concurrent optical observations.
- The framework represents a promising first step towards extending SCF reconstruction to the full 1979–2023 ESA CCI AVHRR SCF, though transferability to other regions and time periods requires explicit validation before broader application can be attempted.
Abstract
1. Introduction
2. Data and Methods
2.1. Study Area and Data
2.2. Data Preprocessing
2.3. Model Architecture and Training
3. Results
3.1. Model Performance and Baseline Comparison
3.2. Error Analysis
3.3. Reconstruction Examples and Prediction Uncertainty
3.4. Feature Importance and In Situ Validation
4. Discussion
5. Conclusions and Future Work
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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| Name | Dataset | Spatial Resol. | Temporal Resol. | Temporal Coverage |
|---|---|---|---|---|
| Snow Cover Fraction (SCF) | ESA CCI L3C SCFV AVHRR v4.0 | 0.05° | Daily | 1979–2023 |
| Snow Water Equivalent (SWE) | ESA CCI L3C SWE SSMIS DMSP v3.1 | 0.1° | Daily | 1979–2022 |
| Land Cover | ESA CCI LC L4 300 m P1Y | 300 m | Yearly | 1992–2022 |
| 2 m Temperature | ERA5-Land 2 m Temperature | 0.1° | Hourly | 1950–present |
| Elevation | CGIAR-CSI SRTM 4.1 | 0.05° | Static | Static |
| Approach | RMSE | MAE | R2 | Bias |
|---|---|---|---|---|
| Spatial Interpolation | 0.3567 | 0.2067 | 0.3409 | −0.0282 |
| SWE Sigmoid | 0.1920 | 0.1184 | 0.8091 | 0.0224 |
| XGBoost | 0.1234 | 0.0588 | 0.9211 | −0.0004 |
| Random Forest | 0.1240 | 0.0590 | 0.9204 | −0.0001 |
| U-Net (this study) | 0.1127 | 0.0443 | 0.9342 | 0.0040 |
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Jakob, F.; Neuhaus, C.; Wunderle, S. Applying U-Net for Estimating AVHRR-Based Snow Cover Fraction (ESA CCI+ Snow) During Cloud Cover and Polar Night in Scandinavia. Remote Sens. 2026, 18, 2030. https://doi.org/10.3390/rs18122030
Jakob F, Neuhaus C, Wunderle S. Applying U-Net for Estimating AVHRR-Based Snow Cover Fraction (ESA CCI+ Snow) During Cloud Cover and Polar Night in Scandinavia. Remote Sensing. 2026; 18(12):2030. https://doi.org/10.3390/rs18122030
Chicago/Turabian StyleJakob, Fabio, Christoph Neuhaus, and Stefan Wunderle. 2026. "Applying U-Net for Estimating AVHRR-Based Snow Cover Fraction (ESA CCI+ Snow) During Cloud Cover and Polar Night in Scandinavia" Remote Sensing 18, no. 12: 2030. https://doi.org/10.3390/rs18122030
APA StyleJakob, F., Neuhaus, C., & Wunderle, S. (2026). Applying U-Net for Estimating AVHRR-Based Snow Cover Fraction (ESA CCI+ Snow) During Cloud Cover and Polar Night in Scandinavia. Remote Sensing, 18(12), 2030. https://doi.org/10.3390/rs18122030
