This study proposes a new deep learning-based approach for detecting pitting corrosion on stainless-steel sheet pile surfaces in drainage channels. Conventional ultrasonic thickness measurement methods cannot detect microscopic pitting corrosion that occurs before measurable thickness reduction. The research develops an automated detection system using visible images captured with smartphone cameras and U-net semantic segmentation. Two stainless steel grades (SUS410 and SUS430) were exposed for 5 years to a brackish water environment and analyzed. The deep learning approach achieved F1-scores of 0.831 (SUS410) and 0.808 (SUS430), outperforming binary thresholding methods (F1-scores: 0.407 and 0.329, respectively). Data augmentation improved performance by 1–3 percentage points. The method enabled non-destructive, quantitative assessment of early-stage corrosion using readily available equipment, providing a practical tool for infrastructure maintenance and long-term durability evaluation.
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Suzuki et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69d893406c1944d70ce0448d — DOI: https://doi.org/10.3390/cmd7020023
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Tetsuya Suzuki
Norihiro OTAKA
Kazuma Shibano
Corrosion and Materials Degradation
Niigata University
Yamaguchi University
Nippon Steel (Japan)
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