Deep learning based solder joint defect detection on industrial printed circuit board X-ray images

被引:0
|
作者
Qianru Zhang
Meng Zhang
Chinthaka Gamanayake
Chau Yuen
Zehao Geng
Hirunima Jayasekara
Chia-wei Woo
Jenny Low
Xiang Liu
Yong Liang Guan
机构
[1] Southeast University,National ASIC Research Center
[2] Singapore University of Technology and Design,undefined
[3] Peking University,undefined
[4] Keysight Technologies,undefined
[5] Nanyang Technological University,undefined
来源
关键词
Joint defect detection; Deep learning; Automated X-ray inspection; Quality control;
D O I
暂无
中图分类号
学科分类号
摘要
With the improvement of electronic circuit production methods, such as reduction of component size and the increase of component density, the risk of defects is increasing in the production line. Many techniques have been incorporated to check for failed solder joints, such as X-ray imaging, optical imaging and thermal imaging, among which X-ray imaging can inspect external and internal defects. However, some advanced algorithms are not accurate enough to meet the requirements of quality control. A lot of manual inspection is required that increases the specialist workload. In addition, automatic X-ray inspection could produce incorrect region of interests that deteriorates the defect detection. The high-dimensionality of X-ray images and changes in image size also pose challenges to detection algorithms. Recently, the latest advances in deep learning provide inspiration for image-based tasks and are competitive with human level. In this work, deep learning is introduced in the inspection for quality control. Four joint defect detection models based on artificial intelligence are proposed and compared. The noisy ROI and the change of image dimension problems are addressed. The effectiveness of the proposed models is verified by experiments on real-world 3D X-ray dataset, which saves the specialist inspection workload greatly.
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页码:1525 / 1537
页数:12
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