Abstract

Automatic defect detection of tire has become an essential issue in the tire industry. However, it is challenging to inspect the inner structure of tire by surface detection. Therefore, an X-ray image sensor is used for tire defect inspection. At present, detection of defective tires is inefficient because tire factories commonly conduct detection by manually checking X-ray images. With the development of deep learning, supervised learning has been introduced to replace human resources. However, in actual industrial scenes, defective samples are rare in comparison to defect-free samples. The quantity of defective samples is insufficient for supervised models to extract features and identify nonconforming products from qualified ones. To address these problems, we propose an unsupervised approach, using no labeled defect samples for training. Moreover, we introduce an augmented reconstruction method and a self-supervised training strategy. The approach is based on the idea of reconstruction. In the training phase, only defect-free samples are used for training the model and updating memory items in the memory module, so the reproduced images in the test phase are bound to resemble defect-free images. The reconstruction residual is utilized to detect defects. The introduction of self-supervised training strategy further strengthens the reconstruction residual to improve detection performance. The proposed method is experimentally proved to be effective. The Area Under Curve (AUC) on a tire X-ray dataset reaches 0.873, so the proposed method is promising for application.

Highlights

  • Defect detection of industrial products is an important research content in the field of machine vision

  • We propose a Generative adversarial network (GAN)-based Anomaly Detection method in which a Memory-Augmented module is implemented (MAGAD)

  • We introduce a memory-augmented module and an image-inpainting strategy to learn the representation of defect-free images

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Summary

Introduction

Defect detection of industrial products is an important research content in the field of machine vision. Due to the complex production environment in the tire manufacturing process, there may exist various defects, such as impurities, blisters, and other issues. These quality issues are difficult to detect through surface detection. An X-ray sensor is commonly used to inspect the inner structure of tire. In tire industry, it is a crucial process for detecting defective tires through X-ray images [1]. It is a crucial process for detecting defective tires through X-ray images [1] This procedure can effectively prevent tires with quality issues from entering the market and reduce the risk of road problems [2].

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