Instance weighting-based Knowledge Transfer Network for Seismic Fault Detection

NeurIPS 2024 Workshop MusIML Submission7 Authors

Published: 30 Nov 2024, Last Modified: 01 Dec 2024MusIML PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Seismic Fault Detection, Convolutional neural network, Transfer Learning, Indian Krishna Godavari Basin
TL;DR: The paper proposes an instance weighting-based transfer learning for seismic fault detection.
Abstract: Geological Fault Detection is a crucial aspect of earthquake prediction and oil exploration. With the advancements in deep learning, the challenging task of accurate fault detection has gained popularity. While the traditional deep learning methods struggle due to the labeling process, training a model solely on synthetic data may not yield satisfactory results due to the disparities between synthetic and real seismic data. To mitigate the impact of these differences, we propose employing an instance weighting-based transfer learning. This allows the model to adapt to only the unique characteristics of the geological data. The proposed method yields satisfying results on the Indian Krishna Godavari Basin dataset.
Submission Number: 7
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