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Smoke or Cloud: Real-Time Satellite Image Segmentation in a Wildfire Data Integration ApplicationAdvanced satellite data is increasingly used for wildfire detection and monitoring, yet near real-time hotspot data products from the GOES-R series often have low confidence due to aerosol contamination. Since aerosol contamination impacts the confidence of the GOES-R hot spot detection algorithm, regardless of contamination from fire-indicating smoke or false positive-indicating clouds, differentiating smoke from cloud has the potential to improve the accuracy of real-time hot spot detection. The primary contribution of this paper is a multi-class smoke and cloud segmentation model that classifies smoke, cloud, and neither pixels from GOES-R true color images in a real-time application. When selecting the final model, we perform an experiment to examine the impact self-supervised learning has on different model architectures. The final model is a U-Net model pre-trained on over 10,000 images using Barlow Twins self-supervised learning and fine-tuned using supervised learning, which exhibits comparable performance to the larger and slower ResUnet model.
Our model improves upon existing satellite-based smoke segmentation, with 85% accuracy and 68% mean intersection-over-union on the test set. The model is deployed in an Open Data Integration for wildfire management (ODIN) application, allowing for real-time smoke and cloud detection to improve situational awareness regarding smoke location. From real-time image import to smoke-cloud segmentation display in the browser, the total run time is approximately 74 s, with 52 s total from the segmentation model pipeline.
Document ID
20250006249
Acquisition Source
Ames Research Center
Document Type
Reprint (Version printed in journal)
Authors
Sequoia Andrade
(HX5 (United States) Fort Walton Beach, Florida, United States)
Nastaran Shafiei
(KBR (United States) Houston, Texas, United States)
Peter Mehlitz
(KBR (United States) Houston, Texas, United States)
Date Acquired
June 16, 2025
Publication Date
May 22, 2025
Publication Information
Publication: Computers and Geosciences
Publisher: Elsevier
Volume: 204
Issue Publication Date: October 1, 2025
ISSN: 0098-3004
e-ISSN: 1873-7803
Subject Category
Earth Resources and Remote Sensing
Computer Systems
Funding Number(s)
CONTRACT_GRANT: 80ARC020D0010
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
NASA Peer Committee
Keywords
Image segmentation
Machine Learning
Satellite Remote Sensing
Wildfire
Computer Vision
Data Integration
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