2023
DOI: 10.3390/app132413204
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Performance Comparison of Deep Learning Models for Damage Identification of Aging Bridges

Su-Wan Chung,
Sung-Sam Hong,
Byung-Kon Kim

Abstract: Currently, damage in aging bridges is assessed visually, leading to significant personnel, time, and cost expenditures. Moreover, the results depend on the subjective judgment of the inspector. Machine-learning-based approaches, such as deep learning, can solve these problems. In particular, instance-segmentation models have been used to identify different types of bridge damage. However, the value of deep-learning-based damage identification may be reduced by insufficient training data, class imbalance, and m… Show more

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