Eduardo Betine Bucker

1paper

1 Paper

CVDec 3, 2019
A Deep Convolutional Network for Seismic Shot-Gather Image Quality Classification

Eduardo Betine Bucker, Antonio José Grandson Busson, Ruy Luiz Milidiú et al.

Deep Learning-based models such as Convolutional Neural Networks, have led to significant advancements in several areas of computing applications. Seismogram quality assurance is a relevant Geophysics task, since in the early stages of seismic processing, we are required to identify and fix noisy sail lines. In this work, we introduce a real-world seismogram quality classification dataset based on 6,613 examples, manually labeled by human experts as good, bad or ugly, according to their noise intensity. This dataset is used to train a CNN classifier for seismic shot-gathers quality prediction. In our empirical evaluation, we observe an F1-score of 93.56% in the test set.