Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps

In a warming Arctic, permafrost-related disturbances, such as retrogressive thaw slumps (RTS), are becoming more abundant and dynamic, with serious implications for permafrost stability and bio-geochemical cycles on local to regional scales. Despite recent advances in the field of earth observation,...

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Published in:Remote Sensing
Main Authors: Nitze, Ingmar, Heidler, Konrad, Barth, Sophia, Grosse, Guido
Format: Other Non-Article Part of Journal/Newspaper
Language:English
Published: Multidisciplinary Digital Publishing Institute (MDPI) 2021
Subjects:
Online Access:https://elib.dlr.de/146213/
https://elib.dlr.de/146213/1/remotesensing-13-04294.pdf
https://www.mdpi.com/2072-4292/13/21/4294/htm
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spelling ftdlr:oai:elib.dlr.de:146213 2023-05-15T14:59:55+02:00 Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps Nitze, Ingmar Heidler, Konrad Barth, Sophia Grosse, Guido 2021-10-26 application/pdf https://elib.dlr.de/146213/ https://elib.dlr.de/146213/1/remotesensing-13-04294.pdf https://www.mdpi.com/2072-4292/13/21/4294/htm en eng Multidisciplinary Digital Publishing Institute (MDPI) https://elib.dlr.de/146213/1/remotesensing-13-04294.pdf Nitze, Ingmar und Heidler, Konrad und Barth, Sophia und Grosse, Guido (2021) Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps. Remote Sensing, 13 (21), 4294_1-4294_23. Multidisciplinary Digital Publishing Institute (MDPI). doi:10.3390/rs13214294 <https://doi.org/10.3390/rs13214294>. ISSN 2072-4292. cc_by CC-BY EO Data Science Zeitschriftenbeitrag PeerReviewed 2021 ftdlr https://doi.org/10.3390/rs13214294 2021-12-06T00:08:31Z In a warming Arctic, permafrost-related disturbances, such as retrogressive thaw slumps (RTS), are becoming more abundant and dynamic, with serious implications for permafrost stability and bio-geochemical cycles on local to regional scales. Despite recent advances in the field of earth observation, many of these have remained undetected as RTS are highly dynamic, small, and scattered across the remote permafrost region. Here, we assessed the potential strengths and limitations of using deep learning for the automatic segmentation of RTS using PlanetScope satellite imagery, ArcticDEM and auxiliary datasets. We analyzed the transferability and potential for pan-Arctic upscaling and regional cross-validation, with independent training and validation regions, in six different thaw slump-affected regions in Canada and Russia. We further tested state-of-the-art model architectures (UNet, UNet++, DeepLabv3) and encoder networks to find optimal model configurations for potential upscaling to continental scales. The best deep learning models achieved mixed results from good to very good agreement in four of the six regions (maxIoU: 0.39 to 0.58; Lena River, Horton Delta, Herschel Island, Kolguev Island), while they failed in two regions (Banks Island, Tuktoyaktuk). Of the tested architectures, UNet++ performed the best. The large variance in regional performance highlights the requirement for a sufficient quantity, quality and spatial variability in the training data used for segmenting RTS across diverse permafrost landscapes, in varying environmental conditions. With our highly automated and configurable workflow, we see great potential for the transfer to active RTS clusters (e.g., Peel Plateau) and upscaling to much larger regions. View Full-Text Other Non-Article Part of Journal/Newspaper Arctic Banks Island Herschel Island Kolguev lena river permafrost German Aerospace Center: elib - DLR electronic library Arctic Canada Tuktoyaktuk ENVELOPE(-133.006,-133.006,69.425,69.425) Herschel Island ENVELOPE(-139.089,-139.089,69.583,69.583) Remote Sensing 13 21 4294
institution Open Polar
collection German Aerospace Center: elib - DLR electronic library
op_collection_id ftdlr
language English
topic EO Data Science
spellingShingle EO Data Science
Nitze, Ingmar
Heidler, Konrad
Barth, Sophia
Grosse, Guido
Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
topic_facet EO Data Science
description In a warming Arctic, permafrost-related disturbances, such as retrogressive thaw slumps (RTS), are becoming more abundant and dynamic, with serious implications for permafrost stability and bio-geochemical cycles on local to regional scales. Despite recent advances in the field of earth observation, many of these have remained undetected as RTS are highly dynamic, small, and scattered across the remote permafrost region. Here, we assessed the potential strengths and limitations of using deep learning for the automatic segmentation of RTS using PlanetScope satellite imagery, ArcticDEM and auxiliary datasets. We analyzed the transferability and potential for pan-Arctic upscaling and regional cross-validation, with independent training and validation regions, in six different thaw slump-affected regions in Canada and Russia. We further tested state-of-the-art model architectures (UNet, UNet++, DeepLabv3) and encoder networks to find optimal model configurations for potential upscaling to continental scales. The best deep learning models achieved mixed results from good to very good agreement in four of the six regions (maxIoU: 0.39 to 0.58; Lena River, Horton Delta, Herschel Island, Kolguev Island), while they failed in two regions (Banks Island, Tuktoyaktuk). Of the tested architectures, UNet++ performed the best. The large variance in regional performance highlights the requirement for a sufficient quantity, quality and spatial variability in the training data used for segmenting RTS across diverse permafrost landscapes, in varying environmental conditions. With our highly automated and configurable workflow, we see great potential for the transfer to active RTS clusters (e.g., Peel Plateau) and upscaling to much larger regions. View Full-Text
format Other Non-Article Part of Journal/Newspaper
author Nitze, Ingmar
Heidler, Konrad
Barth, Sophia
Grosse, Guido
author_facet Nitze, Ingmar
Heidler, Konrad
Barth, Sophia
Grosse, Guido
author_sort Nitze, Ingmar
title Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
title_short Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
title_full Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
title_fullStr Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
title_full_unstemmed Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps
title_sort developing and testing a deep learning approach for mapping retrogressive thaw slumps
publisher Multidisciplinary Digital Publishing Institute (MDPI)
publishDate 2021
url https://elib.dlr.de/146213/
https://elib.dlr.de/146213/1/remotesensing-13-04294.pdf
https://www.mdpi.com/2072-4292/13/21/4294/htm
long_lat ENVELOPE(-133.006,-133.006,69.425,69.425)
ENVELOPE(-139.089,-139.089,69.583,69.583)
geographic Arctic
Canada
Tuktoyaktuk
Herschel Island
geographic_facet Arctic
Canada
Tuktoyaktuk
Herschel Island
genre Arctic
Banks Island
Herschel Island
Kolguev
lena river
permafrost
genre_facet Arctic
Banks Island
Herschel Island
Kolguev
lena river
permafrost
op_relation https://elib.dlr.de/146213/1/remotesensing-13-04294.pdf
Nitze, Ingmar und Heidler, Konrad und Barth, Sophia und Grosse, Guido (2021) Developing and Testing a Deep Learning Approach for Mapping Retrogressive Thaw Slumps. Remote Sensing, 13 (21), 4294_1-4294_23. Multidisciplinary Digital Publishing Institute (MDPI). doi:10.3390/rs13214294 <https://doi.org/10.3390/rs13214294>. ISSN 2072-4292.
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container_title Remote Sensing
container_volume 13
container_issue 21
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