In seismic interpretation, pixel-level labels of various rock structures can be time-consuming and expensive to obtain. As a result, there oftentimes exists a non-trivial quantity of unlabeled data that is left unused simply because traditional deep learning methods rely on access to fully labeled volumes. To rectify this problem, contrastive learning approaches have been proposed that use a self-supervised methodology in order to learn useful representations from unlabeled data. However, traditional contrastive learning approaches are based on assumptions from the domain of natural images that do not make use of seismic context. In order to incorporate this context within contrastive learning, we propose a novel positive pair selection strategy based on the position of slices within a seismic volume. We show that the learnt representations from our method out-perform a state of the art contrastive learning methodology in a semantic segmentation task.
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SEG/AAPG International Meeting for Applied Geoscience & Energy
August 28–September 1, 2022
Houston, Texas, USA
Volumetric supervised contrastive learning for seismic semantic segmentation Available to Purchase
Kiran Kokilepersaud;
Kiran Kokilepersaud
Center for Energy and Geo Processing (CeGP), Georgia Institute of Technology
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Mohit Prabhushankar;
Mohit Prabhushankar
Center for Energy and Geo Processing (CeGP), Georgia Institute of Technology
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Ghassan AlRegib
Ghassan AlRegib
Center for Energy and Geo Processing (CeGP), Georgia Institute of Technology
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Paper presented at the SEG/AAPG International Meeting for Applied Geoscience & Energy, Houston, Texas, USA, August 2022.
Paper Number:
SEG-2022-3751735
Published:
November 01 2022
Citation
Kokilepersaud, Kiran, Prabhushankar, Mohit, and Ghassan AlRegib. "Volumetric supervised contrastive learning for seismic semantic segmentation." Paper presented at the SEG/AAPG International Meeting for Applied Geoscience & Energy, Houston, Texas, USA, August 2022. doi: https://doi.org/10.1190/image2022-3751735.1
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