Abstract

Seismic images are data collected by sending seismic waves to the earth subsurface, recording the reflection and providing subsurface structural information. Seismic attributes are quantities derived from seismic data and provide complementary information. Enhancing seismic images by fusing them with seismic attributes will improve the subsurface visualization and reduce the processing time. In seismic data interpretation, fusion techniques have been used to enhance the resolution and reduce the noise of a single seismic attribute. In this paper, we investigate the enhancement of 3D seismic images using image fusion techniques and neural networks to combine seismic attributes. The paper evaluates the feasibility of using image fusion models pretrained on specific image fusion tasks. These models achieved the best results on their respective tasks and are tested for seismic image fusion. The experiments showed that image fusion techniques are capable of combining up to three seismic attributes without distortion, future studies can increase the number. This is the first study conducted using pretrained models on other types of images for seismic image fusion and the results are promising.

Highlights

  • Seismic images are data gathered during the exploration of the earth subsurface by sending seismic waves to the earth subsurface and recording the reflection

  • We investigate enhancement of 3D seismic images using image fusion and deep learning

  • The study was conducted to evaluate the feasibility of using image fusion models pretrained on other image fusion tasks for seismic data fusion

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Summary

Introduction

Seismic images are data gathered during the exploration of the earth subsurface by sending seismic waves to the earth subsurface and recording the reflection. They provide subsurface structural information and allow the modeling and visualization of the earth subsurface [1]. The most recent and relevant is the work done by Al-Dossari et al [4]. They have extended octree color quantization Algorithm, to increase the number of the combined seismic attributes. The main limitations are the maximum number of attributes is limited to eight, the order of the attributes effects the results and the combined image results have artifacts

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