Binary Segmentation of Seismic Facies Using Encoder-Decoder Neural
Networks
- URL: http://arxiv.org/abs/2012.03675v1
- Date: Sun, 15 Nov 2020 01:36:52 GMT
- Title: Binary Segmentation of Seismic Facies Using Encoder-Decoder Neural
Networks
- Authors: Gefersom Lima, Gabriel Ramos, Sandro Rigo, Felipe Zeiser, Ariane da
Silveira
- Abstract summary: This work presents a Deep Neural Network for Facies (DNFS) to obtain state-of-the-art results for seismic facies segmentation.
DNFS is trained using a combination of cross-entropy and Jaccard loss functions.
Our results show that DNFS obtains highly detailed predictions for seismic facies segmentation using fewer parameters than StNet and U-Net.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The interpretation of seismic data is vital for characterizing sediments'
shape in areas of geological study. In seismic interpretation, deep learning
becomes useful for reducing the dependence on handcrafted facies segmentation
geometry and the time required to study geological areas. This work presents a
Deep Neural Network for Facies Segmentation (DNFS) to obtain state-of-the-art
results for seismic facies segmentation. DNFS is trained using a combination of
cross-entropy and Jaccard loss functions. Our results show that DNFS obtains
highly detailed predictions for seismic facies segmentation using fewer
parameters than StNet and U-Net.
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