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Article Dans Une Revue Journal of Geophysical Research : Solid Earth Année : 2021

Automatic fault mapping in remote optical images and topographic data with deep learning

Lionel Mattéo
  • Fonction : Auteur
Isabelle Manighetti
Martijn van den Ende
Antoine Mercier
Nicolas Girard
Frédérique Leclerc
Tiziano Giampetro
Stéphane Dominguez

Résumé

Faults form dense, complex multi‐scale networks generally featuring a master fault and myriads of smaller‐scale faults and fractures off its trace, often referred to as damage. Quantification of the architecture of these complex networks is critical to understanding fault and earthquake mechanics. Commonly, faults are mapped manually in the field or from optical images and topographic data through the recognition of the specific curvilinear traces they form at the ground surface. However, manual mapping is time‐consuming, which limits our capacity to produce complete representations and measurements of the fault networks. To overcome this problem, we have adopted a machine learning approach, namely a U‐Net Convolutional Neural Network, to automate the identification and mapping of fractures and faults in optical images and topographic data. Intentionally, we trained the CNN with a moderate amount of manually created fracture and fault maps of low resolution and basic quality, extracted from one type of optical images (standard camera photographs of the ground surface). Based on a number of performance tests, we select the best performing model, MRef, and demonstrate its capacity to predict fractures and faults accurately in image data of various types and resolutions (ground photographs, drone and satellite images and topographic data). MRef exhibits good generalization capacities, making it a viable tool for fast and accurate mapping of fracture and fault networks in image and topographic data. The MRef model can thus be used to analyze fault organization, geometry, and statistics at various scales, key information to understand fault and earthquake mechanics.
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Origine : Publication financée par une institution

Dates et versions

hal-03191101 , version 1 (11-05-2021)

Licence

Paternité - Pas d'utilisation commerciale

Identifiants

Citer

Lionel Mattéo, Isabelle Manighetti, Yuliya Tarabalka, Jean‐michel Gaucel, Martijn van den Ende, et al.. Automatic fault mapping in remote optical images and topographic data with deep learning. Journal of Geophysical Research : Solid Earth, 2021, ⟨10.1029/2020JB021269⟩. ⟨hal-03191101⟩
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