--> Attention Models Based on Sparse Autoencoders for Seismic Interpretation
[First Hit]

AAPG ACE 2018

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Attention Models Based on Sparse Autoencoders for Previous HitSeismicNext Hit Interpretation

Abstract

One of the fundamental steps in the exploration of oil, gas, and hydrocarbons is to detect various subsurface structures such as faults, salt domes, gas chimneys and channels within Previous HitseismicNext Hit volumes. In recent years, with the dramatic increase in the size of acquired Previous HitseismicNext Hit data, manual interpretation is becoming extremely time consuming and labor-intensive. Attention models based on human visual system (HVS) can be utilized to mimic and predict the behaviour of interpreters inspecting Previous HitseismicNext Hit sections. Leveraging these models, we can not only automate the process of Previous HitseismicNext Hit interpretation but also develop new Previous HitseismicNext Hit attributes that highlight areas of interest in Previous HitseismicNext Hit sections and convey the most useful information in a compact manner. A recent trend is to apply machine learning techniques to design computational attention models by learning ground-truth eye-fixation patterns recorded from human subjects viewing natural scenes. However, the lack of such eye-fixation data for Previous HitseismicNext Hit interpretation has posed a limitation to developing learning-based attention models for Previous HitseismicNext Hit data. In this work, we overcome this limitation by first learning the variances among features of natural images that direct human visual attention, and then extracting such features from Previous HitseismicNext Hit images to study and recognize salient geological structures. Specifically, we propose a novel approach based on a data-driven sparse autoencoder architecture that can automatically extract features from unlabeled 3D Previous HitseismicNext Hit volumes. We train the autoencoder on natural images to derive higher dimensional sparse features. These features are then adapted to the Previous HitseismicNext Hit domain by utilizing Previous HitseismicNext Hit data to fine-tune the sparse autoencoder in a semi-supervised domain adaptation setting. Finally, a center-surround model is used to calculate the saliency for the Previous HitseismicNext Hit data in the feature domain. We demonstrate that the proposed autoencoder-based approach can effectively estimate salient structures within large Previous HitseismicNext Hit volumes, using real Previous HitseismicTop datasets from the F3 block in the North Sea, Netherlands and the Great South Basin, New Zealand. The preliminary results demonstrate not only the capability of the proposed method in highlighting important structures such as faults and salt domes in an effective and accurate manner but also its potential for computer-aided extraction of other geologic features as well.