Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway

Knowledge of the spatio-temporal occurrence of avalanche activity is critical for avalanche forecasting. We present a near-real time automatic avalanche monitoring system that outputs detected avalanche polygons within roughly 10 min after Sentinel-1 SAR data are download. Our avalanche detection al...

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Published in:Remote Sensing
Main Authors: Markus Eckerstorfer, Hannah Vickers, Eirik Malnes, Jakob Grahn
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2019
Subjects:
Online Access:https://doi.org/10.3390/rs11232863
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author Markus Eckerstorfer
Hannah Vickers
Eirik Malnes
Jakob Grahn
author_facet Markus Eckerstorfer
Hannah Vickers
Eirik Malnes
Jakob Grahn
author_sort Markus Eckerstorfer
collection MDPI Open Access Publishing
container_issue 23
container_start_page 2863
container_title Remote Sensing
container_volume 11
description Knowledge of the spatio-temporal occurrence of avalanche activity is critical for avalanche forecasting. We present a near-real time automatic avalanche monitoring system that outputs detected avalanche polygons within roughly 10 min after Sentinel-1 SAR data are download. Our avalanche detection algorithm has an average probability of detection (POD) of 67.2% with a false alarm rate (FAR) averaging 45.9, with a maximum POD of over 85% and a minimum FAR of 24.9% compared to manual detection of avalanches. The high variability in performance stems from the dynamic nature of snow in the Sentinel-1 data. After tuning parameters of the detection algorithm, we processed five years of Sentinel-1 images acquired over a 150 × 100 km large area in Northern Norway, with the best setup. Compared to a dataset of field-observed avalanches, 77.3% were manually detectable. Using these manual detections as benchmark, the avalanche detection algorithm achieved an accuracy of 79% with high POD in cases of medium to large wet snow avalanches. For the first time, we present a dataset of spatio-temporal avalanche activity over several winters from a large region. Currently, the Norwegian Avalanche Warning Service is using our processing system for pre-operational use in three regions in Norway.
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genre Northern Norway
genre_facet Northern Norway
geographic Norway
The Sentinel
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institution Open Polar
language English
long_lat ENVELOPE(73.317,73.317,-52.983,-52.983)
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op_doi https://doi.org/10.3390/rs11232863
op_relation https://dx.doi.org/10.3390/rs11232863
op_rights https://creativecommons.org/licenses/by/4.0/
op_source Remote Sensing; Volume 11; Issue 23; Pages: 2863
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spelling ftmdpi:oai:mdpi.com:/2072-4292/11/23/2863/ 2025-01-16T23:53:50+00:00 Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway Markus Eckerstorfer Hannah Vickers Eirik Malnes Jakob Grahn agris 2019-12-02 application/pdf https://doi.org/10.3390/rs11232863 EN eng Multidisciplinary Digital Publishing Institute https://dx.doi.org/10.3390/rs11232863 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 11; Issue 23; Pages: 2863 SAR Sentinel-1 snow avalanche automatic detection Text 2019 ftmdpi https://doi.org/10.3390/rs11232863 2023-07-31T22:51:11Z Knowledge of the spatio-temporal occurrence of avalanche activity is critical for avalanche forecasting. We present a near-real time automatic avalanche monitoring system that outputs detected avalanche polygons within roughly 10 min after Sentinel-1 SAR data are download. Our avalanche detection algorithm has an average probability of detection (POD) of 67.2% with a false alarm rate (FAR) averaging 45.9, with a maximum POD of over 85% and a minimum FAR of 24.9% compared to manual detection of avalanches. The high variability in performance stems from the dynamic nature of snow in the Sentinel-1 data. After tuning parameters of the detection algorithm, we processed five years of Sentinel-1 images acquired over a 150 × 100 km large area in Northern Norway, with the best setup. Compared to a dataset of field-observed avalanches, 77.3% were manually detectable. Using these manual detections as benchmark, the avalanche detection algorithm achieved an accuracy of 79% with high POD in cases of medium to large wet snow avalanches. For the first time, we present a dataset of spatio-temporal avalanche activity over several winters from a large region. Currently, the Norwegian Avalanche Warning Service is using our processing system for pre-operational use in three regions in Norway. Text Northern Norway MDPI Open Access Publishing Norway The Sentinel ENVELOPE(73.317,73.317,-52.983,-52.983) Remote Sensing 11 23 2863
spellingShingle SAR
Sentinel-1
snow avalanche
automatic detection
Markus Eckerstorfer
Hannah Vickers
Eirik Malnes
Jakob Grahn
Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title_full Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title_fullStr Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title_full_unstemmed Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title_short Near-Real Time Automatic Snow Avalanche Activity Monitoring System Using Sentinel-1 SAR Data in Norway
title_sort near-real time automatic snow avalanche activity monitoring system using sentinel-1 sar data in norway
topic SAR
Sentinel-1
snow avalanche
automatic detection
topic_facet SAR
Sentinel-1
snow avalanche
automatic detection
url https://doi.org/10.3390/rs11232863