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Using Deep Learning to Detect Defects in Manufacturing: A Comprehensive Survey and Current Challenges

期刊

MATERIALS
卷 13, 期 24, 页码 -

出版社

MDPI
DOI: 10.3390/ma13245755

关键词

defect detection; quality control; deep learning; object detection

资金

  1. National Natural Science Foundation of China [91746116, 61863005]
  2. Science and Technology Foundation of Guizhou Province [[2020]009, [2016]5013, [2019]3003, [2020]005]
  3. Guizhou Province Internet + Collaborative Intelligent Manufacturing Key Laboratory Open Fund [[2016]5103]

向作者/读者索取更多资源

The detection of product defects is essential in quality control in manufacturing. This study surveys stateoftheart deep-learning methods in defect detection. First, we classify the defects of products, such as electronic components, pipes, welded parts, and textile materials, into categories. Second, recent mainstream techniques and deep-learning methods for defects are reviewed with their characteristics, strengths, and shortcomings described. Third, we summarize and analyze the application of ultrasonic testing, filtering, deep learning, machine vision, and other technologies used for defect detection, by focusing on three aspects, namely method and experimental results. To further understand the difficulties in the field of defect detection, we investigate the functions and characteristics of existing equipment used for defect detection. The core ideas and codes of studies related to high precision, high positioning, rapid detection, small object, complex background, occluded object detection and object association, are summarized. Lastly, we outline the current achievements and limitations of the existing methods, along with the current research challenges, to assist the research community on defect detection in setting a further agenda for future studies.

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