Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping

The systematic mapping of flood events with Synthetic Aperture Radar (SAR) data is an area of growing importance. One global flood mapping algorithm utilized within the Copernicus Emergency Management Service is based upon a Bayesian Inference model that compares a SAR image to a simulated reference...

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Main Authors: Mark Edwin Tupas, Florian Roth, Bernhard Bauer-Marschallinger, Wolfgang Wagner
Format: Article
Language:English
Published: Taylor & Francis Group 2024-12-01
Series:GIScience & Remote Sensing
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Online Access:https://www.tandfonline.com/doi/10.1080/15481603.2024.2427304
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author Mark Edwin Tupas
Florian Roth
Bernhard Bauer-Marschallinger
Wolfgang Wagner
author_facet Mark Edwin Tupas
Florian Roth
Bernhard Bauer-Marschallinger
Wolfgang Wagner
author_sort Mark Edwin Tupas
collection DOAJ
description The systematic mapping of flood events with Synthetic Aperture Radar (SAR) data is an area of growing importance. One global flood mapping algorithm utilized within the Copernicus Emergency Management Service is based upon a Bayesian Inference model that compares a SAR image to a simulated reference image representing no-flood conditions. This no-flood reference image is at present generated using a harmonic model trained using historic time series, thereby producing a backscatter image representing mean seasonal conditions. One known weakness of this approach is that it cannot account for changing environmental conditions from year to year, potentially causing an overestimation of flood extent during dry periods, snow and frost, or other effects causing lower-than normal backscatter. To minimize this detrimental effect, we introduce an exponential filter to estimate the no-flood reference image by weighting the most recent backscatter observations according to their time difference to the current SAR acquisition. We compare the performance of the new exponential filter model against the harmonic model using a novel time-series flood mapping assessment approach. First, we assess their predictions against the actual SAR image time series for the year 2023. Then, we analyze the false positive rate of the corresponding flood maps generated to ensure the robustness of the automated algorithm outside of flood events. Furthermore, we perform qualitative and quantitative analyses of flood maps matching with semi-automatic results from Copernicus Emergency Management Services and Sentinel Asia as a reference. Our time-series analysis confirms increased false positive rates due to well-known environmental drivers and highlights issues with agricultural overestimation. In this regard, the time-series comparisons of the no-flood reference models show a clear improvement in the TU Wien algorithm with the exponential filter, effectively reducing false positive rates on non-flooded scenes in most study sites. The exponential filter performed better than the harmonic model in most flooded scenes, where sites show generally improved Critical Success Index and User’s accuracy. However, the exponential filter model has difficulties with sites with prolonged floods in the time series, requiring further development. Overall, the exponential filter no-flood reference model shows great promise for improved global near-real-time flood mapping.
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spelling doaj-art-4b62d48a8b554c7bb4319608e5ea0e182024-12-06T13:51:50ZengTaylor & Francis GroupGIScience & Remote Sensing1548-16031943-72262024-12-0161110.1080/15481603.2024.2427304Assessment of time-series-derived no-flood references for sar-based Bayesian flood mappingMark Edwin Tupas0Florian Roth1Bernhard Bauer-Marschallinger2Wolfgang Wagner3Remote Sensing Research Group, Department of Geodesy and Geoinformation, TU Wien, Vienna, AustriaRemote Sensing Research Group, Department of Geodesy and Geoinformation, TU Wien, Vienna, AustriaRemote Sensing Research Group, Department of Geodesy and Geoinformation, TU Wien, Vienna, AustriaRemote Sensing Research Group, Department of Geodesy and Geoinformation, TU Wien, Vienna, AustriaThe systematic mapping of flood events with Synthetic Aperture Radar (SAR) data is an area of growing importance. One global flood mapping algorithm utilized within the Copernicus Emergency Management Service is based upon a Bayesian Inference model that compares a SAR image to a simulated reference image representing no-flood conditions. This no-flood reference image is at present generated using a harmonic model trained using historic time series, thereby producing a backscatter image representing mean seasonal conditions. One known weakness of this approach is that it cannot account for changing environmental conditions from year to year, potentially causing an overestimation of flood extent during dry periods, snow and frost, or other effects causing lower-than normal backscatter. To minimize this detrimental effect, we introduce an exponential filter to estimate the no-flood reference image by weighting the most recent backscatter observations according to their time difference to the current SAR acquisition. We compare the performance of the new exponential filter model against the harmonic model using a novel time-series flood mapping assessment approach. First, we assess their predictions against the actual SAR image time series for the year 2023. Then, we analyze the false positive rate of the corresponding flood maps generated to ensure the robustness of the automated algorithm outside of flood events. Furthermore, we perform qualitative and quantitative analyses of flood maps matching with semi-automatic results from Copernicus Emergency Management Services and Sentinel Asia as a reference. Our time-series analysis confirms increased false positive rates due to well-known environmental drivers and highlights issues with agricultural overestimation. In this regard, the time-series comparisons of the no-flood reference models show a clear improvement in the TU Wien algorithm with the exponential filter, effectively reducing false positive rates on non-flooded scenes in most study sites. The exponential filter performed better than the harmonic model in most flooded scenes, where sites show generally improved Critical Success Index and User’s accuracy. However, the exponential filter model has difficulties with sites with prolonged floods in the time series, requiring further development. Overall, the exponential filter no-flood reference model shows great promise for improved global near-real-time flood mapping.https://www.tandfonline.com/doi/10.1080/15481603.2024.2427304Flood mappingSynthetic Aperture RadarSentinel-1Bayes Theoremharmonic modelexponential filter
spellingShingle Mark Edwin Tupas
Florian Roth
Bernhard Bauer-Marschallinger
Wolfgang Wagner
Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
GIScience & Remote Sensing
Flood mapping
Synthetic Aperture Radar
Sentinel-1
Bayes Theorem
harmonic model
exponential filter
title Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
title_full Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
title_fullStr Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
title_full_unstemmed Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
title_short Assessment of time-series-derived no-flood references for sar-based Bayesian flood mapping
title_sort assessment of time series derived no flood references for sar based bayesian flood mapping
topic Flood mapping
Synthetic Aperture Radar
Sentinel-1
Bayes Theorem
harmonic model
exponential filter
url https://www.tandfonline.com/doi/10.1080/15481603.2024.2427304
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AT florianroth assessmentoftimeseriesderivednofloodreferencesforsarbasedbayesianfloodmapping
AT bernhardbauermarschallinger assessmentoftimeseriesderivednofloodreferencesforsarbasedbayesianfloodmapping
AT wolfgangwagner assessmentoftimeseriesderivednofloodreferencesforsarbasedbayesianfloodmapping