X-ray PCB defect automatic diagnosis algorithm based on deep learning and artificial intelligence

被引:0
作者
Yaojun Liu
Ping Wang
Jingjing Liu
Chuanyang Liu
机构
[1] Nanjing University of Aeronautics and Astronautics,College of Automation Engineering
[2] Wuhu State-Owned Factory of Machining,College of Mechanical and Electrical Engineering
[3] Chizhou University,College of Electronic and Information Engineering
[4] Nanjing University of Aeronautics and Astronautics,undefined
来源
Neural Computing and Applications | 2023年 / 35卷
关键词
Artificial intelligence; Artificial neural networks; Circuit board defects; Diagnostic algorithms;
D O I
暂无
中图分类号
学科分类号
摘要
As a main electronic material, X-ray circuits are widely used in various electronic devices, and their quality has an important impact on the overall quality of electronic products. In the process of mass production of circuit boards, due to the large number of layers, tight lines and some harmful external factors, circuit board quality may be problematic. Detecting circuit board defects are important for improving the reliability of electronic products. This paper introduces deep learning and artificial intelligence technology to conduct research on the automatic detection of X-ray circuit board defects. The study used a defect detection system to study X-ray circuit boards as a detection object and obtained the structure, lighting system and composition of the detection system. The working principle of the detection system is explained, and the image is preprocessed. Testing the processing performance of the PCB defect detection system, when the number of pixels is 6526, 7028, 7530 and 8032, the time consumption ratios between the proposed detection system and image processing on a traditional PC are 35.17%, 35.4%, 35% and 35.28%, respectively. The experimental results make a certain contribution to the future artificial intelligence X-ray PCB defect automatic diagnosis algorithm.
引用
收藏
页码:25263 / 25273
页数:10
相关论文
共 50 条
[41]   Research on Intelligent Selection Mode of Edge Server Based on Artificial Intelligence Deep Reinforcement Learning Algorithm [J].
Li X. ;
Yang D. ;
Han R. ;
Yu H. ;
Yin C. .
Dianzi Keji Daxue Xuebao/Journal of the University of Electronic Science and Technology of China, 2023, 52 (04) :588-594
[42]   Segmentation of periapical lesions with automatic deep learning on panoramic radiographs: an artificial intelligence study [J].
Boztuna, Mehmet ;
Firincioglulari, Mujgan ;
Akkaya, Nurullah ;
Orhan, Kaan .
BMC ORAL HEALTH, 2024, 24 (01)
[43]   Artificial Intelligence and COVID-19: Deep Learning Approaches for Diagnosis and Treatment [J].
Jamshidi, Mohammad Behdad ;
Lalbakhsh, Ali ;
Talla, Jakub ;
Peroutka, Zdenek ;
Hadjilooei, Farimah ;
Lalbakhsh, Pedram ;
Jamshidi, Morteza ;
La Spada, Luigi ;
Mirmozafari, Mirhamed ;
Dehghani, Mojgan ;
Sabet, Asal ;
Roshani, Saeed ;
Roshani, Sobhan ;
Bayat-Makou, Nima ;
Mohamadzade, Bahare ;
Malek, Zahra ;
Jamshidi, Alireza ;
Kiani, Sarah ;
Hashemi-Dezaki, Hamed ;
Mohyuddin, Wahab .
IEEE ACCESS, 2020, 8 :109581-109595
[44]   Artificial Intelligence-Based Software with CE Mark for Chest X-ray Interpretation: Opportunities and Challenges [J].
Fanni, Salvatore Claudio ;
Marcucci, Alessandro ;
Volpi, Federica ;
Valentino, Salvatore ;
Neri, Emanuele ;
Romei, Chiara .
DIAGNOSTICS, 2023, 13 (12)
[45]   Artificial intelligence-based model for predicting pulmonary arterial hypertension on chest x-ray images [J].
Shun Imai ;
Seiichiro Sakao ;
Jun Nagata ;
Akira Naito ;
Ayumi Sekine ;
Toshihiko Sugiura ;
Ayako Shigeta ;
Akira Nishiyama ;
Hajime Yokota ;
Norihiro Shimizu ;
Takeshi Sugawara ;
Toshiaki Nomi ;
Seiwa Honda ;
Keisuke Ogaki ;
Nobuhiro Tanabe ;
Takayuki Baba ;
Takuji Suzuki .
BMC Pulmonary Medicine, 24
[46]   Artificial intelligence-based model for predicting pulmonary arterial hypertension on chest x-ray images [J].
Imai, Shun ;
Sakao, Seiichiro ;
Nagata, Jun ;
Naito, Akira ;
Sekine, Ayumi ;
Sugiura, Toshihiko ;
Shigeta, Ayako ;
Nishiyama, Akira ;
Yokota, Hajime ;
Shimizu, Norihiro ;
Sugawara, Takeshi ;
Nomi, Toshiaki ;
Honda, Seiwa ;
Ogaki, Keisuke ;
Tanabe, Nobuhiro ;
Baba, Takayuki ;
Suzuki, Takuji .
BMC PULMONARY MEDICINE, 2024, 24 (01)
[47]   Rapid and accurate intraoperative pathological diagnosis by artificial intelligence with deep learning technology [J].
Zhang, Jing ;
Song, Yanlin ;
Xia, Fan ;
Zhu, Chenjing ;
Zhang, Yingying ;
Song, Wenpeng ;
Xu, Jianguo ;
Ma, Xuelei .
MEDICAL HYPOTHESES, 2017, 107 :98-99
[48]   Chest X-ray in Emergency Radiology: What Artificial Intelligence Applications Are Available? [J].
Irmici, Giovanni ;
Ce, Maurizio ;
Caloro, Elena ;
Khenkina, Natallia ;
Della Pepa, Gianmarco ;
Ascenti, Velio ;
Martinenghi, Carlo ;
Papa, Sergio ;
Oliva, Giancarlo ;
Cellina, Michaela .
DIAGNOSTICS, 2023, 13 (02)
[49]   Diagnostic performance of an artificial intelligence model for the detection of pneumothorax at chest X-ray [J].
Monti, Caterina Beatrice ;
Bianchi, Lorenzo Maria Giuseppe ;
Rizzetto, Francesco ;
Carbonaro, Luca Alessandro ;
Vanzulli, Angelo .
CLINICAL IMAGING, 2025, 117
[50]   Deep learning-based localization and segmentation of wrist fractures on X-ray radiographs [J].
Joshi, Deepa ;
Singh, Thipendra P. ;
Joshi, Anil Kumar .
NEURAL COMPUTING & APPLICATIONS, 2022, 34 (21) :19061-19077