Self-Supervised Delineation of Geological Structures using Orthogonal Latent Space Projection
We developed two machine learning frameworks that could assist in automated litho-stratigraphic interpretation of seismic volumes without any manual hand labeling from an experienced seismic interpreter. The first framework is an unsupervised hierarchical clustering model to divide seismic images fr...
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Zusammenfassung: | We developed two machine learning frameworks that could assist in automated
litho-stratigraphic interpretation of seismic volumes without any manual hand
labeling from an experienced seismic interpreter. The first framework is an
unsupervised hierarchical clustering model to divide seismic images from a
volume into certain number of clusters determined by the algorithm. The
clustering framework uses a combination of density and hierarchical techniques
to determine the size and homogeneity of the clusters. The second framework
consists of a self-supervised deep learning framework to label regions of
geological interest in seismic images. It projects the latent-space of an
encoder-decoder architecture unto two orthogonal subspaces, from which it
learns to delineate regions of interest in the seismic images. To demonstrate
an application of both frameworks, a seismic volume was clustered into various
contiguous clusters, from which four clusters were selected based on distinct
seismic patterns: horizons, faults, salt domes and chaotic structures. Images
from the selected clusters are used to train the encoder-decoder network. The
output of the encoder-decoder network is a probability map of the possibility
an amplitude reflection event belongs to an interesting geological structure.
The structures are delineated using the probability map. The delineated images
are further used to post-train a segmentation model to extend our results to
full-vertical sections. The results on vertical sections show that we can
factorize a seismic volume into its corresponding structural components.
Lastly, we showed that our deep learning framework could be modeled as an
attribute extractor and we compared our attribute result with various existing
attributes in literature and demonstrate competitive performance with them. |
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DOI: | 10.48550/arxiv.2108.09605 |