2019
DOI: 10.11591/ijece.v9i1.pp297-306
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Automated PCB identification and defect-detection system (APIDS)

Abstract: Ever growing PCB industry requires automation during manufacturing process to produce defect free products. Machine Vision is widely used as popular means of inspection to find defects in PCBs. However, it is still largely dependent on user input to select algorithm set for the PCB under inspection prior to the beginning of the process. Continuous increase in computation power of computers and image quality of image acquisition devices demands new methods for further automation. This paper proposes a new metho… Show more

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Cited by 11 publications
(6 citation statements)
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References 16 publications
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“…In [9], the authors propose a system that performs PCB identification followed by defect detection with the goal of automating the process of PCB inspection. They have used SURF and ORB features to perform identification of PCBs.…”
Section: Complete Pcb Identificationmentioning
confidence: 99%
“…In [9], the authors propose a system that performs PCB identification followed by defect detection with the goal of automating the process of PCB inspection. They have used SURF and ORB features to perform identification of PCBs.…”
Section: Complete Pcb Identificationmentioning
confidence: 99%
“…Reference [12] attempted to mimic an industrial environment by supporting their hardware with a "light box" structure. The structure was a Perspex cuboid with multiple LED strips lining the edges of the box.…”
Section: Illumination Issuesmentioning
confidence: 99%
“…Once the data are of high quality, images can be processed to identify and extract key features (edges, shapes, colors, etc.). Researchers have focused on extracting useful features [97][98][99][100][101][102]. Some simple features include colours as a sorting criteria [103,104].…”
Section: Machine Visionmentioning
confidence: 99%