4.7 Article

Deep-learning-based burned area mapping using the synergy of Sentinel-1&2 data

Journal

REMOTE SENSING OF ENVIRONMENT
Volume 264, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2021.112575

Keywords

Burned area mapping; Sentinel-1; Sentinel-2; Siamese self-attention; Deep learning

Funding

  1. Beijing Institute of Technology Research Fund Program for Young Scholars

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This study investigates the potential improvement of mapping burned areas by synergizing optical and radar data with higher spatial resolutions. A Siamese Self-Attention classification strategy is proposed, along with a multi-source dataset for training and testing, to appraise the achieved improvements. Test sites, feature sources, and classification strategies are analyzed to evaluate the effectiveness of the proposed method.
Around 350 million hectares of land are affected by wildfires every year influencing the health of ecosystems and leaving a trail of destruction. Accurate information over burned areas (BA) is essential for governments and communities to prioritize recovery actions. Prior research over the past decades has established the potentials and limitations of space-borne earth observation for mapping BA over large geographic areas at various scales. The operational deployment of Sentinel-1 and Sentinel-2 constellations significantly improved the quality and quantity of the imagery from the microwave (C-band) and optical regions on the spectrum. Based on that, this study set to investigate whether the existing coarse BA products can be further improved by the synergy of optical surface reflectance (SR), radar backscatter coefficient (BS), and/or radar interferometric coherence (COR) data with higher spatial resolutions. A Siamese Self-Attention (SSA) classification strategy is proposed for the multi-sensor BA mapping and a multi-source dataset is constructed at the object level for the training and testing. Results are analyzed by test sites, feature sources, and classification strategies to appraise the improvements achieved by the proposed method.

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