论文标题
工业X射线电路板图像上焊接接头的基于深度学习的缺陷检测
Deep Learning Based Defect Detection for Solder Joints on Industrial X-Ray Circuit Board Images
论文作者
论文摘要
质量控制在电子生产过程中至关重要。随着产生电子电路的方法的改善,在组装印刷电路板(PCB)期间,焊料缺陷的机会越来越大。已经合并了许多技术,用于检查失败的焊接,例如X射线成像,光学成像和热成像。有了一些高级算法,新技术有望根据数字图像控制生产质量。但是,当前的算法有时不够准确,无法满足质量控制。需要专家进行后续检查。对于自动X射线检查,X射线图像关节的关节位于感兴趣的区域(ROI),并通过某些算法进行检查。一些不正确的ROI会恶化检查算法。 X射线图像的高尺寸和图像尺寸的不同大小也挑战了检查算法。另一方面,深度学习的最新进展揭示了基于图像的任务,并且在人类层面上具有竞争力。在本文中,深度学习在PCB质量检查过程中基于X射线成像的质量控制中纳入。提出了两个基于人工智能(AI)的模型,并比较关节缺陷检测。解决了噪声ROI问题和成像维度问题的不同大小。通过在现实世界3D X射线数据集上进行实验来验证所提出方法的功效。通过合并提出的方法,专家检查工作量得到了很大的保存。
Quality control is of vital importance during electronics production. As the methods of producing electronic circuits improve, there is an increasing chance of solder defects during assembling the printed circuit board (PCB). Many technologies have been incorporated for inspecting failed soldering, such as X-ray imaging, optical imaging, and thermal imaging. With some advanced algorithms, the new technologies are expected to control the production quality based on the digital images. However, current algorithms sometimes are not accurate enough to meet the quality control. Specialists are needed to do a follow-up checking. For automated X-ray inspection, joint of interest on the X-ray image is located by region of interest (ROI) and inspected by some algorithms. Some incorrect ROIs deteriorate the inspection algorithm. The high dimension of X-ray images and the varying sizes of image dimensions also challenge the inspection algorithms. On the other hand, recent advances on deep learning shed light on image-based tasks and are competitive to human levels. In this paper, deep learning is incorporated in X-ray imaging based quality control during PCB quality inspection. Two artificial intelligence (AI) based models are proposed and compared for joint defect detection. The noised ROI problem and the varying sizes of imaging dimension problem are addressed. The efficacy of the proposed methods are verified through experimenting on a real-world 3D X-ray dataset. By incorporating the proposed methods, specialist inspection workload is largely saved.