Equivariant imaging for self-supervised regularly undersampled seismic data interpolation

  • Weiwei Xu
  • , Vincenzo Lipari
  • , Paolo Bestagini
  • , Wenchao Chen
  • , Stefano Tubaro

Research output: Contribution to journalConference articlepeer-review

3 Scopus citations

Abstract

Because of the restriction of complex field conditions and economic circumstance, seismic data is usually undersampled in the spatial domain, which needs to be interpolated to meet the requirements of following seismic data processing such as seismic imaging. In this abstract, we present a seismic data interpolation method via an end-to-end self-supervised deep learning framework. Specifically, a CNN is trained only using the observed undersampled seismic data itself. Furthermore, based on the equivariance of seismic data with respect to shift and undersampling, a training strategy that enforces both the measurement consistency and the equivalence is utilized. Experiments on regularly undersampled synthetic and field data interpolation show the effectiveness of our presented method in comparison with deep image prior (DIP) based interpolation method.

Original languageEnglish
Pages (from-to)1920-1924
Number of pages5
JournalSEG Technical Program Expanded Abstracts
Volume2022-August
DOIs
StatePublished - 15 Aug 2022
Event2nd International Meeting for Applied Geoscience and Energy, IMAGE 2022 - Houston, United States
Duration: 28 Aug 20221 Sep 2022

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