Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations

<p>Spatially dense and continuous information on avalanche occurrences is crucial for numerous safety-related applications such as avalanche warning, hazard zoning, hazard mitigation measures, forestry, risk management and numerical simulations. This information is today still collected in a n...

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Main Authors: E. D. Hafner, P. Barton, R. C. Daudt, J. D. Wegner, K. Schindler, Y. Bühler
Format: Article
Language:English
Published: Copernicus Publications 2022-09-01
Series:The Cryosphere
Online Access:https://tc.copernicus.org/articles/16/3517/2022/tc-16-3517-2022.pdf
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author E. D. Hafner
E. D. Hafner
E. D. Hafner
P. Barton
R. C. Daudt
J. D. Wegner
J. D. Wegner
K. Schindler
Y. Bühler
Y. Bühler
author_facet E. D. Hafner
E. D. Hafner
E. D. Hafner
P. Barton
R. C. Daudt
J. D. Wegner
J. D. Wegner
K. Schindler
Y. Bühler
Y. Bühler
author_sort E. D. Hafner
collection DOAJ
description <p>Spatially dense and continuous information on avalanche occurrences is crucial for numerous safety-related applications such as avalanche warning, hazard zoning, hazard mitigation measures, forestry, risk management and numerical simulations. This information is today still collected in a non-systematic way by observers in the field. Current research has explored the application of remote sensing technology to fill this information gap by providing spatially continuous information on avalanche occurrences over large regions. Previous investigations have confirmed the high potential of avalanche mapping from remotely sensed imagery to complement existing databases. Currently, the bottleneck for fast data provision from optical data is the time-consuming manual mapping. In our study we deploy a slightly adapted DeepLabV3+, a state-of-the-art deep learning model, to automatically identify and map avalanches in SPOT 6/7 imagery from 24 January 2018 and 16 January 2019. We relied on 24 778 manually annotated avalanche polygons split into geographically disjointed regions for training, validating and testing. Additionally, we investigate generalization ability by testing our best model configuration on SPOT 6/7 data from 6 January 2018 and comparing it to avalanches we manually annotated for that purpose. To assess the quality of the model results, we investigate the probability of detection (POD), the positive predictive value (PPV) and the F1 score. Additionally, we assessed the reproducibility of manually annotated avalanches in a small subset of our data. We achieved an average POD of 0.610, PPV of 0.668 and an F1 score of 0.625 in our test areas and found an F1 score in the same range for avalanche outlines annotated by different experts. Our model and approach are an important step towards a fast and comprehensive documentation of avalanche periods from optical satellite imagery in the future, complementing existing avalanche databases. This will have a large impact on safety-related applications, making mountain regions safer.</p>
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spelling doaj.art-d3d0b3d5888a42db999b3fb67624d1c72022-12-22T03:46:04ZengCopernicus PublicationsThe Cryosphere1994-04161994-04242022-09-01163517353010.5194/tc-16-3517-2022Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitationsE. D. Hafner0E. D. Hafner1E. D. Hafner2P. Barton3R. C. Daudt4J. D. Wegner5J. D. Wegner6K. Schindler7Y. Bühler8Y. Bühler9WSL Institute for Snow and Avalanche Research SLF, Davos Dorf, 7260, SwitzerlandClimate Change, Extremes, and Natural Hazards in Alpine Regions Research Center CERC¸ Davos Dorf, 7260, SwitzerlandEcoVision Lab, Photogrammetry and Remote Sensing, ETH Zurich, Zurich, 8092, SwitzerlandEcoVision Lab, Photogrammetry and Remote Sensing, ETH Zurich, Zurich, 8092, SwitzerlandEcoVision Lab, Photogrammetry and Remote Sensing, ETH Zurich, Zurich, 8092, SwitzerlandEcoVision Lab, Photogrammetry and Remote Sensing, ETH Zurich, Zurich, 8092, SwitzerlandInstitute for Computational Science, University of Zurich, Zurich, 8057, SwitzerlandEcoVision Lab, Photogrammetry and Remote Sensing, ETH Zurich, Zurich, 8092, SwitzerlandWSL Institute for Snow and Avalanche Research SLF, Davos Dorf, 7260, SwitzerlandClimate Change, Extremes, and Natural Hazards in Alpine Regions Research Center CERC¸ Davos Dorf, 7260, Switzerland<p>Spatially dense and continuous information on avalanche occurrences is crucial for numerous safety-related applications such as avalanche warning, hazard zoning, hazard mitigation measures, forestry, risk management and numerical simulations. This information is today still collected in a non-systematic way by observers in the field. Current research has explored the application of remote sensing technology to fill this information gap by providing spatially continuous information on avalanche occurrences over large regions. Previous investigations have confirmed the high potential of avalanche mapping from remotely sensed imagery to complement existing databases. Currently, the bottleneck for fast data provision from optical data is the time-consuming manual mapping. In our study we deploy a slightly adapted DeepLabV3+, a state-of-the-art deep learning model, to automatically identify and map avalanches in SPOT 6/7 imagery from 24 January 2018 and 16 January 2019. We relied on 24 778 manually annotated avalanche polygons split into geographically disjointed regions for training, validating and testing. Additionally, we investigate generalization ability by testing our best model configuration on SPOT 6/7 data from 6 January 2018 and comparing it to avalanches we manually annotated for that purpose. To assess the quality of the model results, we investigate the probability of detection (POD), the positive predictive value (PPV) and the F1 score. Additionally, we assessed the reproducibility of manually annotated avalanches in a small subset of our data. We achieved an average POD of 0.610, PPV of 0.668 and an F1 score of 0.625 in our test areas and found an F1 score in the same range for avalanche outlines annotated by different experts. Our model and approach are an important step towards a fast and comprehensive documentation of avalanche periods from optical satellite imagery in the future, complementing existing avalanche databases. This will have a large impact on safety-related applications, making mountain regions safer.</p>https://tc.copernicus.org/articles/16/3517/2022/tc-16-3517-2022.pdf
spellingShingle E. D. Hafner
E. D. Hafner
E. D. Hafner
P. Barton
R. C. Daudt
J. D. Wegner
J. D. Wegner
K. Schindler
Y. Bühler
Y. Bühler
Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
The Cryosphere
title Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
title_full Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
title_fullStr Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
title_full_unstemmed Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
title_short Automated avalanche mapping from SPOT 6/7 satellite imagery with deep learning: results, evaluation, potential and limitations
title_sort automated avalanche mapping from spot 6 7 satellite imagery with deep learning results evaluation potential and limitations
url https://tc.copernicus.org/articles/16/3517/2022/tc-16-3517-2022.pdf
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