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

机译:使用深度学习来检测制造业的缺陷:全面的调查和当前挑战

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摘要

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.
机译:产品缺陷的检测对于制造中的质量控制至关重要。这项研究调查了缺陷检测中的大规模学习方法。首先,我们将产品的缺陷分类为类别.PACTION造型产品,如电子元件,管道,焊接部件和纺织材料。其次,最近的主流技术和用于缺陷的深度学习方法是通过其特征,优势和描述的缺陷审查。三,我们通过专注于三个方面,总结和分析了用于缺陷检测的超声波检测,过滤,深度学习,机器视觉和其他技术的应用,即方法和实验结果。为了进一步了解缺陷检测领域的困难,我们研究了用于缺陷检测的现有设备的功能和特性。概述了与高精度,高定位,快速检测,小对象,复杂背景,闭塞对象检测和对象关联有关的核心思路和守则。最后,我们概述了现有方法的当前成就和局限性以及当前的研究挑战,协助研究界对设定进一步议程的缺陷检测,以便为未来的研究进行进一步的研究。

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