1887

Abstract

Summary

This abstract presents a new method to combine seismic attributes and improve the resolution in the new produced seismic attribute map. Specifically in this paper two non-linear amplitude attribute maps of the same area/slice are processed within a deep convolutional neural network to produce an amplitude attribute map with enhanced resolution and with the potential of implementing parametrization for quality control during the seismic processing and inversion process.

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2021-03-08
2024-04-19
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