Breakout-picker: Reducing false positives in deep learning-based borehole breakout characterization from acoustic image logs
Guangyu Wang, Xiaodong Ma, and Xinming Wu

TL;DR
Breakout-picker is a deep learning framework designed to improve borehole breakout detection accuracy by significantly reducing false positives through negative sample training and azimuthal symmetry validation.
Contribution
This study introduces Breakout-picker, a novel deep learning approach that incorporates negative samples and symmetry validation to enhance breakout detection accuracy.
Findings
Breakout-picker outperforms existing methods in accuracy.
False positive rates are substantially reduced.
The method is validated on datasets from three different regions.
Abstract
Borehole breakouts are stress-induced spalling on the borehole wall, which are identifiable in acoustic image logs as paired zones with near-symmetry azimuths, low acoustic amplitudes, and increased borehole radius. Accurate breakout characterization is crucial for in-situ stress analysis. In recent years, deep learning has been introduced to automate the time-consuming and labor-intensive breakout picking process. However, existing approaches often suffer from misclassification of non-breakout features, leading to high false positive rates. To address this limitation, this study develops a deep learning framework, termed Breakout-picker, with a specific focus on reducing false positives in automatic breakout characterization. Breakout-picker reduces false positives through two strategies. First, the training of Breakout-picker incorporates negative samples of non-breakout features,…
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