Uncertainty Quantification with Deep Ensemble Methods for Super-Resolution of Sentinel 2 Satellite Images †
Abstract
:1. Introduction
2. Methods
2.1. Bayesian Methods for Uncertainty Quantification in Deep Neural Networks
2.1.1. Bayesian Methods and Deep Ensembles
2.1.2. Utilizing the Loss-Weighted Deep Ensembles
2.1.3. Derivation of Ensemble Weights: Contribution Ratio Control
2.2. Architecture of a Weighted Deep Ensemble for the Super-Resolution of Satellite Data: WDESen2
2.2.1. Kernel Component Exploration
2.3. Evaluation of the Predicted Variance and Kernel Projection of the Predictions of WDESen2
2.4. Dataset Splits
Images | Split | Patches | ||
---|---|---|---|---|
Tropical landscape/farmlands | 1 | Training Validation Test | ||
Mountains landscape | 9 | Training Validation Test | 58,500, |
3. Results
3.1. Linking Uncertainties and Physical Patterns on the Ground
3.2. Selective Prediction: Improving Accuracy with Uncertainty and Kernel Projections
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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B5 | B6 | B7 | B8a | B11 | B12 | Average | |
---|---|---|---|---|---|---|---|
RMSE | |||||||
Bicubic | 93.2 | 105.1 | 124.6 | 133.6 | 105.4 | 94.8 | 109.4 |
DSen2 | 44.5 | 54.3 | 58.9 | 60.2 | 62.5 | 53.0 | 55.5 |
DESen2 | 35.7 | 43.6 | 50.8 | 52.8 | 55.1 | 45.8 | 47.3 |
WDESen2 | 34.6 | 42.6 | 50.1 | 52.4 | 54.4 | 45.5 | 46.6 |
KWDESen2 | 30.9 | 39.4 | 46.2 | 48.3 | 49.7 | 38.2 | 42.1 |
VWDESen2 | 28.7 | 37.6 | 44.0 | 46.0 | 48.0 | 35.8 | 40.0 |
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Iagaru, D.; Gottschling, N.M. Uncertainty Quantification with Deep Ensemble Methods for Super-Resolution of Sentinel 2 Satellite Images. Phys. Sci. Forum 2023, 9, 4. https://doi.org/10.3390/psf2023009004
Iagaru D, Gottschling NM. Uncertainty Quantification with Deep Ensemble Methods for Super-Resolution of Sentinel 2 Satellite Images. Physical Sciences Forum. 2023; 9(1):4. https://doi.org/10.3390/psf2023009004
Chicago/Turabian StyleIagaru, David, and Nina Maria Gottschling. 2023. "Uncertainty Quantification with Deep Ensemble Methods for Super-Resolution of Sentinel 2 Satellite Images" Physical Sciences Forum 9, no. 1: 4. https://doi.org/10.3390/psf2023009004