Feb. 2, 2024, 9:46 p.m. | Feng Wang Bo Yang Renfang Wang Hong Qiu

cs.LG updates on arXiv.org arxiv.org

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 …

build cs.lg data deep learning deep learning techniques deep neural network free generate labels network neural network performance physics.geo-ph samples train

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