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  4. Optimizing deep learning models for fast and effective rust identification
 
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Optimizing deep learning models for fast and effective rust identification

Journal
Journal of Asian Architecture and Building Engineering
ISSN
13467581
Date Issued
2026
Author(s)
Huang, I-Feng
Shih, Kuan-Chun
YING-CHIEH CHAN  
Chen, Po-Han
Chang, Luh-Maan
DOI
10.1080/13467581.2026.2613492
URI
https://www.scopus.com/record/display.uri?eid=2-s2.0-105028000389&origin=resultslist
https://scholars.lib.ntu.edu.tw/handle/123456789/736228
Abstract
Steel bridges are highly susceptible to corrosion, which threatens structural safety and requires reliable inspection methods. Traditional manual inspections lack accuracy, consistency, and real-time capability. This study proposes an efficient rust detection framework that integrates HSV color space transformation, a U-Net (ResNet-34) deep learning model, and a webcam. To address the challenge of annotating dispersed rust spots, HSV-based auxiliary labeling was applied, with manual supplementation for cases involving light/dark rust colors. Experimental results demonstrate that the proposed method significantly improves labeling efficiency while maintaining high accuracy. The model achieved IoU of 0.69–0.87, and F-measure of 0.93–0.99 across different scenarios, outperforming approaches such as LS-SVM, ANLDR, and ANNRI. Integrated with a webcam, the system completed rust detection in approximately 7.5 seconds per image, enabling real-time application. The findings confirm that even with a relatively small dataset, U-Net (ResNet-34) provides fast, accurate, and stable rust detection, highlighting its potential for practical steel bridge monitoring and maintenance.
Subjects
Bridge inspection
deep learning
rust detection
steel bridge maintenance
U-Net (ResNet-34)
Publisher
Taylor and Francis Ltd.
Type
journal article

臺大位居世界頂尖大學之列,為永久珍藏及向國際展現本校豐碩的研究成果及學術能量,圖書館整合機構典藏(NTUR)與學術庫(AH)不同功能平台,成為臺大學術典藏NTU scholars。期能整合研究能量、促進交流合作、保存學術產出、推廣研究成果。

To permanently archive and promote researcher profiles and scholarly works, Library integrates the services of “NTU Repository” with “Academic Hub” to form NTU Scholars.

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開放取用是從使用者角度提升資訊取用性的社會運動,應用在學術研究上是透過將研究著作公開供使用者自由取閱,以促進學術傳播及因應期刊訂購費用逐年攀升。同時可加速研究發展、提升研究影響力,NTU Scholars即為本校的開放取用典藏(OA Archive)平台。(點選深入了解OA)

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