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Boundary-Aware Uncertainty Quantification for Wildfire Spread Prediction

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Reliable wildfire spread prediction is vital for risk-aware emergency planning, yet most deep learning models lack principled uncertainty quantification (UQ). Further, for boundary-sensitive cases like wildfire spread, evaluating models with global metrics alone is often insufficient. To shift the focus of UQ evaluation toward a more operationally relevant approach, the Fire-Centered Evaluation Region (FCER) framework is introduced as a spatially conditioned protocol to characterize UQ within critical fire zones. Using FCER, an Ensemble is compared against an distilled single-pass student model on the WildfireSpreadTS dataset. The student model demonstrates comparable calibration and complementary uncertainty ranking in boundary-relevant regimes. Code is available at https://github.com/jonasvilhofunk/WildfireUQ-FCER

Jonas V. Funk• 2026

Related benchmarks

TaskDatasetResultRank
Wildfire SegmentationWildfireSpreadTS 2018
AP51
2
Wildfire SegmentationWildfireSpreadTS 2019
AP35
2
Wildfire SegmentationWildfireSpreadTS 2020
AP50
2
Wildfire SegmentationWildfireSpreadTS 2021
AP58
2
Wildfire SegmentationWildfireSpreadTS Mean 2018-2021
AP49
2
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