Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning

Accurate burned area information is needed to assess the impacts of wildfires on people, communities, and natural ecosystems. Various burned area detection methods have been developed using satellite remote sensing measurements with wide coverage and frequent revisits. Our study aims to expound on t...

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Main Authors: Xikun Hu, Yifang Ban, Andrea Nascetti
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/8/1509
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spelling doaj-fa579a4d3ad346a2b492b2448310403c2021-04-14T23:03:08ZengMDPI AGRemote Sensing2072-42922021-04-01131509150910.3390/rs13081509Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep LearningXikun Hu0Yifang Ban1Andrea Nascetti2Division of Geoinformatics, KTH Royal Institute of Technology, SE-10044 Stockholm, SwedenDivision of Geoinformatics, KTH Royal Institute of Technology, SE-10044 Stockholm, SwedenDivision of Geoinformatics, KTH Royal Institute of Technology, SE-10044 Stockholm, SwedenAccurate burned area information is needed to assess the impacts of wildfires on people, communities, and natural ecosystems. Various burned area detection methods have been developed using satellite remote sensing measurements with wide coverage and frequent revisits. Our study aims to expound on the capability of deep learning (DL) models for automatically mapping burned areas from uni-temporal multispectral imagery. Specifically, several semantic segmentation network architectures, i.e., U-Net, HRNet, Fast-SCNN, and DeepLabv3+, and machine learning (ML) algorithms were applied to Sentinel-2 imagery and Landsat-8 imagery in three wildfire sites in two different local climate zones. The validation results show that the DL algorithms outperform the ML methods in two of the three cases with the compact burned scars, while ML methods seem to be more suitable for mapping dispersed burn in boreal forests. Using Sentinel-2 images, U-Net and HRNet exhibit comparatively identical performance with higher kappa (around 0.9) in one heterogeneous Mediterranean fire site in Greece; Fast-SCNN performs better than others with kappa over 0.79 in one compact boreal forest fire with various burn severity in Sweden. Furthermore, directly transferring the trained models to corresponding Landsat-8 data, HRNet dominates in the three test sites among DL models and can preserve the high accuracy. The results demonstrated that DL models can make full use of contextual information and capture spatial details in multiple scales from fire-sensitive spectral bands to map burned areas. Using only a post-fire image, the DL methods not only provide automatic, accurate, and bias-free large-scale mapping option with cross-sensor applicability, but also have potential to be used for onboard processing in the next Earth observation satellites.https://www.mdpi.com/2072-4292/13/8/1509Sentinel-2Landsat-8burned area mappingdeep learningsemantic segmentationmachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Xikun Hu
Yifang Ban
Andrea Nascetti
spellingShingle Xikun Hu
Yifang Ban
Andrea Nascetti
Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
Remote Sensing
Sentinel-2
Landsat-8
burned area mapping
deep learning
semantic segmentation
machine learning
author_facet Xikun Hu
Yifang Ban
Andrea Nascetti
author_sort Xikun Hu
title Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
title_short Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
title_full Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
title_fullStr Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
title_full_unstemmed Uni-Temporal Multispectral Imagery for Burned Area Mapping with Deep Learning
title_sort uni-temporal multispectral imagery for burned area mapping with deep learning
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-04-01
description Accurate burned area information is needed to assess the impacts of wildfires on people, communities, and natural ecosystems. Various burned area detection methods have been developed using satellite remote sensing measurements with wide coverage and frequent revisits. Our study aims to expound on the capability of deep learning (DL) models for automatically mapping burned areas from uni-temporal multispectral imagery. Specifically, several semantic segmentation network architectures, i.e., U-Net, HRNet, Fast-SCNN, and DeepLabv3+, and machine learning (ML) algorithms were applied to Sentinel-2 imagery and Landsat-8 imagery in three wildfire sites in two different local climate zones. The validation results show that the DL algorithms outperform the ML methods in two of the three cases with the compact burned scars, while ML methods seem to be more suitable for mapping dispersed burn in boreal forests. Using Sentinel-2 images, U-Net and HRNet exhibit comparatively identical performance with higher kappa (around 0.9) in one heterogeneous Mediterranean fire site in Greece; Fast-SCNN performs better than others with kappa over 0.79 in one compact boreal forest fire with various burn severity in Sweden. Furthermore, directly transferring the trained models to corresponding Landsat-8 data, HRNet dominates in the three test sites among DL models and can preserve the high accuracy. The results demonstrated that DL models can make full use of contextual information and capture spatial details in multiple scales from fire-sensitive spectral bands to map burned areas. Using only a post-fire image, the DL methods not only provide automatic, accurate, and bias-free large-scale mapping option with cross-sensor applicability, but also have potential to be used for onboard processing in the next Earth observation satellites.
topic Sentinel-2
Landsat-8
burned area mapping
deep learning
semantic segmentation
machine learning
url https://www.mdpi.com/2072-4292/13/8/1509
work_keys_str_mv AT xikunhu unitemporalmultispectralimageryforburnedareamappingwithdeeplearning
AT yifangban unitemporalmultispectralimageryforburnedareamappingwithdeeplearning
AT andreanascetti unitemporalmultispectralimageryforburnedareamappingwithdeeplearning
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