Paper Title :Defect Detection in Printed Circuit Boards Using Deep Learning Approach
Author :Sumaiya Rashid, Bushra Manzoor, Sumit Budhiraja, Garima Joshi, Sarvjit Singh
Article Citation :Sumaiya Rashid ,Bushra Manzoor ,Sumit Budhiraja ,Garima Joshi ,Sarvjit Singh ,
(2023 ) " Defect Detection in Printed Circuit Boards Using Deep Learning Approach " ,
International Journal of Advance Computational Engineering and Networking (IJACEN) ,
pp. 99-103,
Volume-11,Issue-6
Abstract : In this paper, a CNN-based PCB defect detection technique is presented for both assembled and bare PCBs. Even
though a lot of work has already been done in the area of defect detection, not much work has been done to develop a single
approach that could identify defects in both kinds of PCBs.Thus, a CNN-based model called YOLOv5 small has been used
to detect six different types of defects in bare PCBs, as well as two components, ICs and capacitors, which, if absent or
improperly positioned, can result in a defective PCB. Finally, in bare PCBs, six defects were detected with a significant mAP
of 93.6%, while in assembled PCBs, two components were detected with a significant mAP of 96.1% @IOU using small
version of YOLOv5.
Keywords - Printed Circuit Boards (PCBs), Convolutional Neural Network (CNN), YOLOv5, Defect detection.
Type : Research paper
Published : Volume-11,Issue-6
DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-19837
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Copyright: © Institute of Research and Journals
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Published on 2023-10-13 |
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