Learnable Gabor kernels in convolutional neural networks for seismic interpretation tasks
Fu Wang, Tariq Alkhalifah

TL;DR
This paper introduces learnable Gabor kernels in CNNs to enhance seismic interpretation, especially under noisy conditions, by combining interpretability and improved generalization in seismic facies classification.
Contribution
It proposes a novel CNN modification with learnable Gabor kernels in the first layer, constrained by seismic signal characteristics, to improve robustness and interpretability.
Findings
Enhanced classification accuracy on seismic data.
Improved robustness to noise in seismic images.
Better generalization with Gabor kernels under noisy conditions.
Abstract
The use of convolutional neural networks (CNNs) in seismic interpretation tasks, like facies classification, has garnered a lot of attention for its high accuracy. However, its drawback is usually poor generalization when trained with limited training data pairs, especially for noisy data. Seismic images are dominated by diverse wavelet textures corresponding to seismic facies with various petrophysical parameters, which can be suitably represented by Gabor functions. Inspired by this fact, we propose using learnable Gabor convolutional kernels in the first layer of a CNN network to improve its generalization. The modified network combines the interpretability features of Gabor filters and the reliable learning ability of original CNN. More importantly, it replaces the pixel nature of conventional CNN filters with a constrained function form that depends on 5 parameters that are more in…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Hydraulic Fracturing and Reservoir Analysis · Reservoir Engineering and Simulation Methods
