Smoke or cloud: Real-time satellite image segmentation in a wildfire data integration application

被引:0
作者
Andrade, Sequoia [1 ]
Shafiei, Nastaran [2 ]
Mehlitz, Peter [2 ]
机构
[1] NASA, HX5, Ames Res Ctr, Bldg 269, Moffett Field, CA 94035 USA
[2] NASA, KBR, Ames Res Ctr, Bldg 269, Moffett Field, CA 94035 USA
关键词
Machine learning; Satellite remote sensing; Wildfire; Image segmentation; Data integration;
D O I
10.1016/j.cageo.2025.105960
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Advanced 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.
引用
收藏
页数:11
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