An improved defect classification algorithm for six printing defects and its implementation on real printed circuit board images
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Date
2012-05Author
Ismail, Ibrahim
Zuwairie, Ibrahim
Kamal, Khalil
Musa, Mohd Mokji
Syed Abdul Rahman, Syed Abu Bakar
Norrima, Mokhtar
Wan Khairunizam, Wan Ahmad
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Show full item recordAbstract
Because decisions made by human inspectors often involve subjective judg-
ment, in addition to being intensive and therefore costly, an automated approach for
printed circuit board (PCB) inspection is preferred to eliminate subjective discrimination
and thus provide fast, quantitative, and dimensional assessments. In this study, defect
classi cation is essential to the identi cation of defect sources. Therefore, an algorithm
for PCB defect classi cation is presented that consists of well-known conventional op-
erations, including image difference, image subtraction, image addition, counted image
comparator,
ood- ll, and labeling for the classi cation of six different defects, namely,
missing hole, pinhole, underetch, short-circuit, open-circuit, and mousebite. The de-
fect classi cation algorithm is improved by incorporating proper image registration and
thresholding techniques to solve the alignment and uneven illumination problem. The
improved PCB defect classi cation algorithm has been applied to real PCB images to
successfully classify all of the defects.