Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing

The long-term survivability of subway tunnels heavily depends on the durability and stability of concrete structures. Cracks in concrete, caused by factors such as severe loading, environmental influences, and chemical effects etc., lead to a reduction in structural durability and may even result in...

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Main Authors: Qingyu Du, Qi Jiang
Format: Article
Language:English
Published: Elsevier 2025-07-01
Series:Case Studies in Construction Materials
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Online Access:http://www.sciencedirect.com/science/article/pii/S221450952401283X
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author Qingyu Du
Qi Jiang
author_facet Qingyu Du
Qi Jiang
author_sort Qingyu Du
collection DOAJ
description The long-term survivability of subway tunnels heavily depends on the durability and stability of concrete structures. Cracks in concrete, caused by factors such as severe loading, environmental influences, and chemical effects etc., lead to a reduction in structural durability and may even result in a loss of stability. In this study, crack detection is achieved through deep learning and image processing. We design a novel crack locally ordered annotation method. Training the object detection model using the proposed annotation method can achieve more accurate crack localization. Subsequently, based on the proposed annotation method, we improve the You Only Look Once version 8 nano (YOLOv8n) model by incorporating Focal Efficient Intersection over Union (FEIoU) and a path aggregation feature pyramid network with dynamic snake convolution (PADFPN), resulting in a YOLOv8n model combined with FEIoU and PADFPN (YOLOv8n-FED). This model effectively integrates multi-scale information of cracks. Finally, we extract the detected crack regions and segment them using a region-growing algorithm. In terms of object detection, based on the proposed annotation method, YOLOv8n-FED, compared with the original model, achieves a detection precision of 95.0 %, an improvement of 3.7 %; and a mean Average Precision (mAP) 50–95 of 80.7 %, a gain of 6.2 %. For semantic segmentation, our method yielded satisfactory results without requiring laborious pixel-level annotations, achieving a precision and F1-score of 75.2 % and 80.9 %, respectively, both outperforming the comparison models. Moreover, it can capture finer crack edge features.
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spelling doaj-art-70355b44aaba41efbd7fb8f5dfaef85c2025-01-01T05:10:22ZengElsevierCase Studies in Construction Materials2214-50952025-07-0122e04131Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processingQingyu Du0Qi Jiang1School of Control Science and Engineering, Shandong University, Jinan 250061, ChinaCorresponding author.; School of Control Science and Engineering, Shandong University, Jinan 250061, ChinaThe long-term survivability of subway tunnels heavily depends on the durability and stability of concrete structures. Cracks in concrete, caused by factors such as severe loading, environmental influences, and chemical effects etc., lead to a reduction in structural durability and may even result in a loss of stability. In this study, crack detection is achieved through deep learning and image processing. We design a novel crack locally ordered annotation method. Training the object detection model using the proposed annotation method can achieve more accurate crack localization. Subsequently, based on the proposed annotation method, we improve the You Only Look Once version 8 nano (YOLOv8n) model by incorporating Focal Efficient Intersection over Union (FEIoU) and a path aggregation feature pyramid network with dynamic snake convolution (PADFPN), resulting in a YOLOv8n model combined with FEIoU and PADFPN (YOLOv8n-FED). This model effectively integrates multi-scale information of cracks. Finally, we extract the detected crack regions and segment them using a region-growing algorithm. In terms of object detection, based on the proposed annotation method, YOLOv8n-FED, compared with the original model, achieves a detection precision of 95.0 %, an improvement of 3.7 %; and a mean Average Precision (mAP) 50–95 of 80.7 %, a gain of 6.2 %. For semantic segmentation, our method yielded satisfactory results without requiring laborious pixel-level annotations, achieving a precision and F1-score of 75.2 % and 80.9 %, respectively, both outperforming the comparison models. Moreover, it can capture finer crack edge features.http://www.sciencedirect.com/science/article/pii/S221450952401283XConcreteCrack detectionLocal ordered annotationDynamic snake convolutionYOLOv8nRegion-growing algorithm
spellingShingle Qingyu Du
Qi Jiang
Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
Case Studies in Construction Materials
Concrete
Crack detection
Local ordered annotation
Dynamic snake convolution
YOLOv8n
Region-growing algorithm
title Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
title_full Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
title_fullStr Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
title_full_unstemmed Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
title_short Improvement of crack detectivity for concrete surface of subway tunnels with anti-corrosion coatings using deep learning and image processing
title_sort improvement of crack detectivity for concrete surface of subway tunnels with anti corrosion coatings using deep learning and image processing
topic Concrete
Crack detection
Local ordered annotation
Dynamic snake convolution
YOLOv8n
Region-growing algorithm
url http://www.sciencedirect.com/science/article/pii/S221450952401283X
work_keys_str_mv AT qingyudu improvementofcrackdetectivityforconcretesurfaceofsubwaytunnelswithanticorrosioncoatingsusingdeeplearningandimageprocessing
AT qijiang improvementofcrackdetectivityforconcretesurfaceofsubwaytunnelswithanticorrosioncoatingsusingdeeplearningandimageprocessing