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A two-stage CNN for automated tire defect inspection in radiographic image

Zhouzhou Zheng, Sen Zhang, Jinyue Shen, Yuyi Shao, Yan Zhang

2021Measurement Science and Technology34 citationsDOI

Abstract

Abstract Visual inspection plays a crucial role during the manufacturing of tires which are essential for safe driving. Due to complicated anisotropic multi-texture background and ambiguous defect in it, automated tire defect detection is facing huge challenges and high costs. In this study, a novel two-stage convolutional neural network (CNN) is proposed for tire inspection by combining an optimized YOLOv3 and improved pyramid scene parsing network. Comparative experiments are conducted with the-state-of-the-art to validate the effectiveness and superior performance of the proposed method. The proposed two-stage CNN method achieves an average precision of 91.39%, the defect semantic segmentation achieves a mean intersection over union of 87.86%. The average detection time for a tire is 1.158 s such that the method can be effectively implemented into the industrial workflow. It can also be easily applied to different visual inspection applications.

Topics & Concepts

Computer scienceConvolutional neural networkVisual inspectionArtificial intelligencePyramid (geometry)Intersection (aeronautics)SegmentationWorkflowComputer visionAutomated X-ray inspectionImage (mathematics)Pattern recognition (psychology)Image processingMathematicsEngineeringDatabaseGeometryAerospace engineeringIndustrial Vision Systems and Defect DetectionAdvanced Neural Network ApplicationsImage and Object Detection Techniques
A two-stage CNN for automated tire defect inspection in radiographic image | Litcius