Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic

Deep learning has been used for mapping retrogressive thaw slumps and other periglacial landforms but its application is still limited to local study areas. To understand the accuracy, efficiency, and transferability of a deep learning model (i.e., DeepLabv3+) when applied to large areas or multiple...

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Published in:Remote Sensing
Main Authors: Lingcao Huang, Trevor C. Lantz, Robert H. Fraser, Kristy F. Tiampo, Michael J. Willis, Kevin Schaefer
Format: Text
Language:English
Published: Multidisciplinary Digital Publishing Institute 2022
Subjects:
Online Access:https://doi.org/10.3390/rs14122747
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author Lingcao Huang
Trevor C. Lantz
Robert H. Fraser
Kristy F. Tiampo
Michael J. Willis
Kevin Schaefer
author_facet Lingcao Huang
Trevor C. Lantz
Robert H. Fraser
Kristy F. Tiampo
Michael J. Willis
Kevin Schaefer
author_sort Lingcao Huang
collection MDPI Open Access Publishing
container_issue 12
container_start_page 2747
container_title Remote Sensing
container_volume 14
description Deep learning has been used for mapping retrogressive thaw slumps and other periglacial landforms but its application is still limited to local study areas. To understand the accuracy, efficiency, and transferability of a deep learning model (i.e., DeepLabv3+) when applied to large areas or multiple regions, we conducted several experiments using training data from three different regions across the Canadian Arctic. To overcome the main challenge of transferability, we used a generative adversarial network (GAN) called CycleGAN to produce new training data in an attempt to improve transferability. The results show that (1) data augmentation can improve the accuracy of the deep learning model but does not guarantee transferability, (2) it is necessary to choose a good combination of hyper-parameters (e.g., backbones and learning rate) to achieve an optimal trade-off between accuracy and efficiency, and (3) a GAN can significantly improve the transferability if the variation between source and target is dominated by color or general texture. Our results suggest that future mapping of retrogressive thaw slumps should prioritize the collection of training data from regions where a GAN cannot improve the transferability.
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permafrost
Thermokarst
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spelling ftmdpi:oai:mdpi.com:/2072-4292/14/12/2747/ 2025-01-16T20:28:16+00:00 Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic Lingcao Huang Trevor C. Lantz Robert H. Fraser Kristy F. Tiampo Michael J. Willis Kevin Schaefer agris 2022-06-08 application/pdf https://doi.org/10.3390/rs14122747 EN eng Multidisciplinary Digital Publishing Institute Biogeosciences Remote Sensing https://dx.doi.org/10.3390/rs14122747 https://creativecommons.org/licenses/by/4.0/ Remote Sensing; Volume 14; Issue 12; Pages: 2747 DeepLab domain adaptation generative adversarial network permafrost thermokarst Text 2022 ftmdpi https://doi.org/10.3390/rs14122747 2023-08-01T05:18:28Z Deep learning has been used for mapping retrogressive thaw slumps and other periglacial landforms but its application is still limited to local study areas. To understand the accuracy, efficiency, and transferability of a deep learning model (i.e., DeepLabv3+) when applied to large areas or multiple regions, we conducted several experiments using training data from three different regions across the Canadian Arctic. To overcome the main challenge of transferability, we used a generative adversarial network (GAN) called CycleGAN to produce new training data in an attempt to improve transferability. The results show that (1) data augmentation can improve the accuracy of the deep learning model but does not guarantee transferability, (2) it is necessary to choose a good combination of hyper-parameters (e.g., backbones and learning rate) to achieve an optimal trade-off between accuracy and efficiency, and (3) a GAN can significantly improve the transferability if the variation between source and target is dominated by color or general texture. Our results suggest that future mapping of retrogressive thaw slumps should prioritize the collection of training data from regions where a GAN cannot improve the transferability. Text Arctic permafrost Thermokarst MDPI Open Access Publishing Arctic Remote Sensing 14 12 2747
spellingShingle DeepLab
domain adaptation
generative adversarial network
permafrost
thermokarst
Lingcao Huang
Trevor C. Lantz
Robert H. Fraser
Kristy F. Tiampo
Michael J. Willis
Kevin Schaefer
Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title_full Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title_fullStr Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title_full_unstemmed Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title_short Accuracy, Efficiency, and Transferability of a Deep Learning Model for Mapping Retrogressive Thaw Slumps across the Canadian Arctic
title_sort accuracy, efficiency, and transferability of a deep learning model for mapping retrogressive thaw slumps across the canadian arctic
topic DeepLab
domain adaptation
generative adversarial network
permafrost
thermokarst
topic_facet DeepLab
domain adaptation
generative adversarial network
permafrost
thermokarst
url https://doi.org/10.3390/rs14122747