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Supervised pretraining matches episodic meta-learning on EuroSAT with 12× less compute
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Standard supervised pretraining — training ResNet-10 to classify everyday objects for 10 epochs (~15 minutes) — achieves 76.2% accuracy on 5-way 5-shot Sentinel-2 satellite land cover classification. This is comparable to episodic meta-learning trained for 40,000 episodes (~3 hours) which achieves 75.0%. Supervised pretraining requires no meta-learning framework or expertise, only standard deep learning classification training, making cross-domain few-shot satellite classification accessible to researchers without specialised AI knowledge.
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Supervised 10 epochs: 5-shot 76.2% ± 1.7%, 20-shot 79.5% ± 1.1%, 50-shot 81.5% ± 1.2%. Episodic 40,000 steps: 5-shot 75.0% ± 0.8%, 20-shot 81.9% ± 0.6%, 50-shot 82.9% ± 0.6%. Training time: supervised ~15 minutes, episodic ~3 hours (12× faster). Same ResNet-10 backbone, 224×224 images, same data augmentation.
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Only 10 supervised epochs (full convergence at 400 epochs may improve results further). Wider confidence intervals (±1.7%) due to 100 evaluation episodes. Only RGB bands from EuroSAT used. Supervised approach may perform differently on target domains more dissimilar to photographs than satellite imagery.
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Anne Fouilloux
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