2024
DOI: 10.3390/fire7030068
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An Optimized Smoke Segmentation Method for Forest and Grassland Fire Based on the UNet Framework

Xinyu Hu,
Feng Jiang,
Xianlin Qin
et al.

Abstract: Smoke, a byproduct of forest and grassland combustion, holds the key to precise and rapid identification—an essential breakthrough in early wildfire detection, critical for forest and grassland fire monitoring and early warning. To address the scarcity of middle–high-resolution satellite datasets for forest and grassland fire smoke, and the associated challenges in identifying smoke, the CAF_SmokeSEG dataset was constructed for smoke segmentation. The dataset was created based on GF-6 WFV smoke images of fores… Show more

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