Simultaneous Automatic Picking and Manual Picking Refinement for First-Break
Haowen Bai, Zixiang Zhao, Jiangshe Zhang, Yukun Cui, Chunxia Zhang,, Zhenbo Guo, Yongjun Wang

TL;DR
The paper introduces the SPR algorithm, a probabilistic method that simultaneously refines manual labels and improves automatic first-break picking in seismic data, demonstrating robustness to outliers and noise.
Contribution
SPR is a novel probabilistic framework that treats true first-breaks as latent variables, enabling dynamic correction of manual labels and enhancing picking accuracy.
Findings
SPR outperforms traditional methods in identifying first-breaks.
The method shows strong generalization across different seismic sites.
SPR effectively handles noisy signals and mislabeled data.
Abstract
First-break picking is a pivotal procedure in processing microseismic data for geophysics and resource exploration. Recent advancements in deep learning have catalyzed the evolution of automated methods for identifying first-break. Nevertheless, the complexity of seismic data acquisition and the requirement for detailed, expert-driven labeling often result in outliers and potential mislabeling within manually labeled datasets. These issues can negatively affect the training of neural networks, necessitating algorithms that handle outliers or mislabeled data effectively. We introduce the Simultaneous Picking and Refinement (SPR) algorithm, designed to handle datasets plagued by outlier samples or even noisy labels. Unlike conventional approaches that regard manual picks as ground truth, our method treats the true first-break as a latent variable within a probabilistic model that includes…
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