2021
DOI: 10.48550/arxiv.2111.10596
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Semi-supervised Impedance Inversion by Bayesian Neural Network Based on 2-d CNN Pre-training

Abstract: Seismic impedance inversion can be performed with a semi-supervised learning algorithm, which only needs a few logs as labels and is less likely to get overfitted. However, classical semi-supervised learning algorithm usually leads to artifacts on the predicted impedance image. In this artical, we improve the semi-supervised learning from two aspects. First, by replacing 1-d convolutional neural network (CNN) layers in deep learning structure with 2-d CNN layers and 2-d maxpooling layers, the prediction accura… Show more

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