Data Science Team, Hyundai Mobis, 203 Teheran-ro, Gangnam-gu, Seoul 06141, Republic of Korea.
Department of Artificial Intelligence Convergence, Chonnam National University, 77 Yongbong-ro, Buk-gu, Gwang-ju 61186, Republic of Korea.
Sensors (Basel). 2023 Mar 2;23(5):2766. doi: 10.3390/s23052766.
Recently, many companies have introduced automated defect detection methods for defect-free PCB manufacturing. In particular, deep learning-based image understanding methods are very widely used. In this study, we present an analysis of training deep learning models to perform PCB defect detection stably. To this end, we first summarize the characteristics of industrial images, such as PCB images. Then, the factors that can cause changes (contamination and quality degradation) to the image data in the industrial field are analyzed. Subsequently, we organize defect detection methods that can be applied according to the situation and purpose of PCB defect detection. In addition, we review the characteristics of each method in detail. Our experimental results demonstrated the impact of various degradation factors, such as defect detection methods, data quality, and image contamination. Based on our overview of PCB defect detection and experiment results, we present knowledge and guidelines for correct PCB defect detection.
最近,许多公司已经引入了用于无缺陷 PCB 制造的自动化缺陷检测方法。特别是,基于深度学习的图像理解方法得到了非常广泛的应用。在这项研究中,我们对训练深度学习模型以稳定地进行 PCB 缺陷检测进行了分析。为此,我们首先总结了工业图像(如 PCB 图像)的特点。然后,分析了可能导致工业现场图像数据发生变化(污染和质量下降)的因素。随后,我们根据 PCB 缺陷检测的情况和目的组织了可应用的缺陷检测方法。此外,我们详细回顾了每种方法的特点。我们的实验结果表明了各种降级因素(例如缺陷检测方法、数据质量和图像污染)的影响。基于我们对 PCB 缺陷检测的概述和实验结果,我们提出了正确进行 PCB 缺陷检测的知识和指导原则。