Wildland fire detection and monitoring using a drone-collected RGB/IR image dataset

Current forest monitoring technologies including satellite remote sensing, manned/piloted aircraft, and observation towers leave uncertainties about a wildfire's extent, behavior, and conditions in the fire's near environment, particularly during its early growth. Rapid mapping and real-time fire monitoring can inform in-time intervention or management solutions to maximize beneficial fire outcomes. Drone systems' unique features of 3D mobility, low flight altitude, and fast and easy deployment make them a valuable tool for early detection and assessment of wildland fires, especially in remote forests that are not easily accessible by ground vehicles. In addition, the lack of abundant, well-annotated aerial datasets - in part due to unmanned aerial vehicles' (UAVs') flight restrictions during prescribed burns and wildfires - has limited research advances in reliable data-driven fire detection and modeling techniques. While existing wildland fire datasets often include either color or thermal fire images, here we present (1) a multi-modal UAV-collected dataset of dual-feed side-by-side videos including both RGB and thermal images of a prescribed fire in an open canopy pine forest in Northern Arizona and (2) a deep learning-based methodology for detecting fire and smoke pixels at accuracy much higher than the usual single-channel video feeds. The collected images are labeled to "fire " or "no-fire " frames by two human experts using side-by-side RGB and thermal images to determine the label. To provide context to the main dataset's aerial imagery, the included supplementary dataset provides a georeferenced pre-burn point cloud, an RGB orthomosaic, weather information, a burn plan, and other burn information. By using and expanding on this guide dataset, research can develop new data-driven fire detection, fire segmentation, and fire modeling techniques.

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Related Dataset #1 : FLAME 2: Fire detection and modeLing: Aerial Multi-spectral imagE dataset

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Author Chen, Xiwen
Hopkins, Bryce
Wang, Hao
O'Neill, Leo
Afghah, Fatemeh
Razi, Abolfazl
Fule, Peter
Coen, Janice
Rowell, Eric
Watts, Adam
Publisher UCAR/NCAR - Library
Publication Date 2022-11-01T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T18:41:10.602547
Metadata Record Identifier edu.ucar.opensky::articles:25932
Metadata Language eng; USA
Suggested Citation Chen, Xiwen, Hopkins, Bryce, Wang, Hao, O'Neill, Leo, Afghah, Fatemeh, Razi, Abolfazl, Fule, Peter, Coen, Janice, Rowell, Eric, Watts, Adam. (2022). Wildland fire detection and monitoring using a drone-collected RGB/IR image dataset. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d7gh9ns7. Accessed 04 April 2025.

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