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Transfer learning reconstructs submarine topography for global mid-ocean ridges

Jiang, Yinghui ; Li, Sijin ; Yan, Yanzi LU ; Sun, Bingqing ; Strobl, Josef and Xiong, Liyang (2024) In International Journal of Applied Earth Observation and Geoinformation 134.
Abstract

Mid-ocean ridges are unique, tectonically active geographical units on Earth that profoundly control the ocean environment and dynamics at the global scale. However, high-resolution topographic data from mid-ocean ridges are rarely available due to the difficulty in detecting ocean floors, which further limits ocean research at the global scale. Here, we divide the global mid-ocean ridge system into 2805 tiles and reconstruct their high-resolution topography by using a transfer learning approach with freely available low-resolution digital elevation models (DEMs) and limited high-resolution DEMs. A high-frequency terrain feature-based deep residual network is proposed to generate high-resolution global mid-ocean ridge DEMs. In this... (More)

Mid-ocean ridges are unique, tectonically active geographical units on Earth that profoundly control the ocean environment and dynamics at the global scale. However, high-resolution topographic data from mid-ocean ridges are rarely available due to the difficulty in detecting ocean floors, which further limits ocean research at the global scale. Here, we divide the global mid-ocean ridge system into 2805 tiles and reconstruct their high-resolution topography by using a transfer learning approach with freely available low-resolution digital elevation models (DEMs) and limited high-resolution DEMs. A high-frequency terrain feature-based deep residual network is proposed to generate high-resolution global mid-ocean ridge DEMs. In this network, topographic knowledge related to mid-ocean ridges is integrated and quantified to improve the learning efficiency and reconstruction quality of the network. A series of verifications and evaluations demonstrate the reliability of reconstructed topographies for submarine topography research. We observe that reconstructed topography can achieve good environmental understanding and information acquisition in the global mid-ocean ridge range. We find that the complexity of the previous terrain environment is underestimated by 26.63% in terms of the slope gradient and by 14.95% in terms of terrain relief, while a 101.10% information improvement can be obtained for the reconstructed topography. The reconstructed topography indicates that diverse and intricate topographical environments of mid-ocean ridges exist among different ocean regions. The proposed transfer learning method for reconstructing high-resolution mid-ocean ridge topographies is valuable and can be utilized for reconstructing information in regions that are difficult to observe directly and lack sufficient data.

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author
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organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
DEM super-resolution, Global mid-ocean ridges, Submarine topography modeling, Transfer learning
in
International Journal of Applied Earth Observation and Geoinformation
volume
134
article number
104182
publisher
Elsevier
external identifiers
  • scopus:85205148589
ISSN
1569-8432
DOI
10.1016/j.jag.2024.104182
language
English
LU publication?
yes
id
15ac951c-b038-4500-8d46-2fbeda937106
date added to LUP
2024-12-11 11:24:56
date last changed
2025-04-04 14:09:51
@article{15ac951c-b038-4500-8d46-2fbeda937106,
  abstract     = {{<p>Mid-ocean ridges are unique, tectonically active geographical units on Earth that profoundly control the ocean environment and dynamics at the global scale. However, high-resolution topographic data from mid-ocean ridges are rarely available due to the difficulty in detecting ocean floors, which further limits ocean research at the global scale. Here, we divide the global mid-ocean ridge system into 2805 tiles and reconstruct their high-resolution topography by using a transfer learning approach with freely available low-resolution digital elevation models (DEMs) and limited high-resolution DEMs. A high-frequency terrain feature-based deep residual network is proposed to generate high-resolution global mid-ocean ridge DEMs. In this network, topographic knowledge related to mid-ocean ridges is integrated and quantified to improve the learning efficiency and reconstruction quality of the network. A series of verifications and evaluations demonstrate the reliability of reconstructed topographies for submarine topography research. We observe that reconstructed topography can achieve good environmental understanding and information acquisition in the global mid-ocean ridge range. We find that the complexity of the previous terrain environment is underestimated by 26.63% in terms of the slope gradient and by 14.95% in terms of terrain relief, while a 101.10% information improvement can be obtained for the reconstructed topography. The reconstructed topography indicates that diverse and intricate topographical environments of mid-ocean ridges exist among different ocean regions. The proposed transfer learning method for reconstructing high-resolution mid-ocean ridge topographies is valuable and can be utilized for reconstructing information in regions that are difficult to observe directly and lack sufficient data.</p>}},
  author       = {{Jiang, Yinghui and Li, Sijin and Yan, Yanzi and Sun, Bingqing and Strobl, Josef and Xiong, Liyang}},
  issn         = {{1569-8432}},
  keywords     = {{DEM super-resolution; Global mid-ocean ridges; Submarine topography modeling; Transfer learning}},
  language     = {{eng}},
  publisher    = {{Elsevier}},
  series       = {{International Journal of Applied Earth Observation and Geoinformation}},
  title        = {{Transfer learning reconstructs submarine topography for global mid-ocean ridges}},
  url          = {{http://dx.doi.org/10.1016/j.jag.2024.104182}},
  doi          = {{10.1016/j.jag.2024.104182}},
  volume       = {{134}},
  year         = {{2024}},
}