Litcius/Paper detail

Automatic pixel‐level crack detection and evaluation of concrete structures using deep learning

Weijian Zhao, Yunyi Liu, Jiawei Zhang, Yi Shao, Jiangpeng Shu

2022Structural Control and Health Monitoring74 citationsDOI

Abstract

To achieve effective inspection of reinforced concrete structures, a smart solution to obtain quantitative crack information automatically from inspection is essential. Therefore, a novel crack feature pyramid network (Crack-FPN) based on image analysis is proposed, which has a distinctive feature extraction ability and reduced computational cost. In this method, the network is trained using public annotated pixel-level image datasets. Additionally, beam loading tests and image dataset collection were performed to validate the effectiveness of the proposed method. The crack regions of test images are detected by YOLOv5 using bounding boxes and segmented by Crack-FPN. Compared to existing methods, Crack-FPN shows higher detection accuracy and computational efficiency for crack images affected by illumination conditions and complex backgrounds. In terms of crack width estimation, the relative error of the proposed method in a wide crack width range is approximately 5%, which is considerably small compared with manual measurement results.

Topics & Concepts

Bounding overwatchPyramid (geometry)Computer scienceFeature (linguistics)PixelRange (aeronautics)Artificial intelligenceFeature extractionImage (mathematics)Structural engineeringArtificial neural networkComputer visionPattern recognition (psychology)Materials scienceEngineeringMathematicsComposite materialPhilosophyLinguisticsGeometryInfrastructure Maintenance and MonitoringConcrete Corrosion and DurabilityStructural Health Monitoring Techniques
Automatic pixel‐level crack detection and evaluation of concrete structures using deep learning | Litcius