TL;DR
This paper introduces a large-scale Landsat-8 dataset for active fire detection, and demonstrates how deep learning models can outperform traditional algorithms in identifying wildfires.
Contribution
It provides a new extensive dataset, compares deep learning architectures with handcrafted algorithms, and shows improved fire detection performance.
Findings
Deep learning models can approximate traditional fire detection algorithms.
Combining models yields higher accuracy than individual algorithms.
Achieved 87.2% precision and 92.4% recall on manually annotated data.
Abstract
Active fire detection in satellite imagery is of critical importance to the management of environmental conservation policies, supporting decision-making and law enforcement. This is a well established field, with many techniques being proposed over the years, usually based on pixel or region-level comparisons involving sensor-specific thresholds and neighborhood statistics. In this paper, we address the problem of active fire detection using deep learning techniques. In recent years, deep learning techniques have been enjoying an enormous success in many fields, but their use for active fire detection is relatively new, with open questions and demand for datasets and architectures for evaluation. This paper addresses these issues by introducing a new large-scale dataset for active fire detection, with over 150,000 image patches (more than 200 GB of data) extracted from Landsat-8 images…
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