GEO-PHLGFeb 1, 2024

Seismic Traveltime Tomography with Label-free Learning

arXiv:2402.00310v22 citationsh-index: 2IEEE Trans Geosci Remote Sens
Originality Incremental advance
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This addresses the challenge of missing or expensive labels in field data inversion for geophysics, offering an incremental improvement over existing methods.

The paper tackles the problem of seismic traveltime tomography by proposing a label-free learning method that integrates deep learning and dictionary learning to enhance low-resolution velocity models, demonstrating effectiveness on synthetic and field data with reduced computational cost.

Deep learning techniques have been used to build velocity models (VMs) for seismic traveltime tomography and have shown encouraging performance in recent years. However, they need to generate labeled samples (i.e., pairs of input and label) to train the deep neural network (NN) with end-to-end learning, and the real labels for field data inversion are usually missing or very expensive. Some traditional tomographic methods can be implemented quickly, but their effectiveness is often limited by prior assumptions. To avoid generating and/or collecting labeled samples, we propose a novel method by integrating deep learning and dictionary learning to enhance the VMs with low resolution by using the traditional tomography-least square method (LSQR). We first design a type of shallow and simple NN to reduce computational cost followed by proposing a two-step strategy to enhance the VMs with low resolution: (1) Warming up. An initial dictionary is trained from the estimation by LSQR through dictionary learning method; (2) Dictionary optimization. The initial dictionary obtained in the warming-up step will be optimized by the NN, and then it will be used to reconstruct high-resolution VMs with the reference slowness and the estimation by LSQR. Furthermore, we design a loss function to minimize traveltime misfit to ensure that NN training is label-free, and the optimized dictionary can be obtained after each epoch of NN training. We demonstrate the effectiveness of the proposed method through the numerical tests on both synthetic and field data.

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