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Type: Journal Article
Author(s): Alexandra E. Larsen; Ivan C. Hanigan; Brian J. Reich; Yi Qin; Martin E. Cope; Geoffrey G. Morgan; Ana G. Rappold
Publication Date: 2021

Background

Wildland fire (wildfire; bushfire) pollution contributes to poor air quality, a risk factor for premature death. The frequency and intensity of wildfires are expected to increase; improved tools for estimating exposure to fire smoke are vital. New-generation satellite-based sensors produce high-resolution spectral images, providing real-time information of surface features during wildfire episodes. Because of the vast size of such data, new automated methods for processing information are required.

Objective

We present a deep fully convolutional neural network (FCN) for predicting fire smoke in satellite imagery in near-real time (NRT).

Methods

The FCN identifies fire smoke using output from operational smoke identification methods as training data, leveraging validated smoke products in a framework that can be operationalized in NRT. We demonstrate this for a fire episode in Australia; the algorithm is applicable to any geographic region.

Results

The algorithm has high classification accuracy (99.5% of pixels correctly classified on average) and precision (average intersection over union = 57.6%).

Significance

The FCN algorithm has high potential as an exposure-assessment tool, capable of providing critical information to fire managers, health and environmental agencies, and the general public to prevent the health risks associated with exposure to hazardous smoke from wildland fires in NRT.

Online Links
Citation: Larsen, Alexandra; Hanigan, Ivan; Reich, Brian J.; Qin, Yi; Cope, Martin; Morgan, Geoffrey; Rappold, Ana G. 2021. A deep learning approach to identify smoke plumes in satellite imagery in near-real time for health risk communication. Journal of Exposure Science & Environmental Epidemiology 31(1):170-176.

Cataloging Information

Topics:
Regions:
Alaska    California    Eastern    Great Basin    Hawaii    Northern Rockies    Northwest    Rocky Mountain    Southern    Southwest    International    National
Keywords:
  • AI - artificial intelligence
  • air quality
  • bushfire
  • convolutional neural network
  • health risk
  • remote sensing
  • satellite imagery
  • wildfire
Record Last Modified:
Record Maintained By: FRAMES Staff (https://www.frames.gov/contact)
FRAMES Record Number: 62923