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Abstract

Summary

Seismic interpretation is a complex and tedious task requiring intensive time-consuming manual interpretation. In the last recent years Convolutional Neural Networks (CNNs) have been introduced to solve several interpretation challenges. Promising results have been already presented for salt, horizons or faults interpretation. The main purpose is to transform long manual interpretation tasks to a few hours of machine learning computation. Hence, geoscientists will have more time to focus on high added value tasks that will help to better understand the subsurface. In this paper, we highlight the criticality of data diversity during the training to get a robust and flexible model. Then we investigate the potential gains for the seismic interpreters in term of quality and object extraction.

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/content/papers/10.3997/2214-4609.201901388
2019-06-03
2024-04-24
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