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Mapping Forest Burn Extent from Hyperspatial Imagery Using Machine Learning

Dale Hamilton, Kamden L. Brothers, Cole McCall, Bryn Gautier, Tyler Shea

2021Remote Sensing18 citationsDOIOpen Access PDF

Abstract

Support vector machines are shown to be highly effective in mapping burn extent from hyperspatial imagery in grasslands. Unfortunately, this pixel-based method is hampered in forested environments that have experienced low-intensity fires because unburned tree crowns obstruct the view of the surface vegetation. This obstruction causes surface fires to be misclassified as unburned. To account for misclassifying areas under tree crowns, trees surrounded by surface burn can be assumed to have been burned underneath. This effort used a mask region-based convolutional neural network (MR-CNN) and support vector machine (SVM) to determine trees and burned pixels in a post-fire forest. The output classifications of the MR-CNN and SVM were used to identify tree crowns in the image surrounded by burned surface vegetation pixels. These classifications were also used to label the pixels under the tree as being within the fire’s extent. This approach results in higher burn extent mapping accuracy by eliminating burn extent false negatives from surface burns obscured by unburned tree crowns, achieving a nine percentage point increase in burn extent mapping accuracy.

Topics & Concepts

PixelSupport vector machineVegetation (pathology)Tree (set theory)Remote sensingEnvironmental scienceConvolutional neural networkComputer scienceArtificial intelligenceGeologyMathematicsMedicinePathologyMathematical analysisFire effects on ecosystemsRemote Sensing in AgricultureRemote Sensing and LiDAR Applications
Mapping Forest Burn Extent from Hyperspatial Imagery Using Machine Learning | Litcius