E3S Web of Conferences (Jan 2021)

Super-resolution reconstruction of seismic section image via multi-scale convolution neural network

  • Deng Meng-Di,
  • Jia Rui-Sheng,
  • Sun Hong-Mei,
  • Zhang Xing-Li

DOI
https://doi.org/10.1051/e3sconf/202130301058
Journal volume & issue
Vol. 303
p. 01058

Abstract

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The resolution of seismic section images can directly affect the subsequent interpretation of seismic data. In order to improve the spatial resolution of low-resolution seismic section images, a super-resolution reconstruction method based on multi-scale convolution is proposed. This method designs a multi-scale convolutional neural network to learn high-low resolution image feature pairs, and realizes mapping learning from low-resolution seismic section images to high-resolution seismic section images. This multi-scale convolutional neural network model consists of four convolutional layers and a sub-pixel convolutional layer. Convolution operations are used to learn abundant seismic section image features, and sub-pixel convolution layer is used to reconstruct high-resolution seismic section image. The experimental results show that the proposed method is superior to the comparison method in peak signal-to-noise ratio (PSNR) and structural similarity (SSIM). In the total training time and reconstruction time, our method is about 22% less than the FSRCNN method and about 18% less than the ESPCN method.