Published June 30, 2024 | Version CC-BY-NC-ND 4.0
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Fault Detection in Printed Circuit Board (PCB) using Image Subtraction Method

  • 1. Department of ECE, Shri Dharmasthala Manjunatheshwara Institute of Technology, Ujire (Karnataka), India.

Contributors

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  • 1. Department of ECE, Shri Dharmasthala Manjunatheshwara Institute of Technology, Ujire (Karnataka), India.
  • 2. Department of ECE, shri Dharmasthala Manjunatheshwara Institute of Technology, Ujire (Karnataka), India.

Description

Abstract: Fault detection in PCBs is a important task in the electronics industry to ensure the consistency and performance of electronic devices. One common approach for detecting defects in PCBs is the subtraction method, which involves subtracting a reference image of a defect- free PCB from an image of a PCB with defects. The resulting image gives the differences between the two images, making it easier to detect and classify defects. In this work, a defect detection system for PCBs using the subtraction method using MATLAB is proposed. The research work uses publicly available PCB defect datasets to train and test the system. The work consists of image pre-processing, image subtraction, and defect detection.

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Dates

Accepted
2024-06-15
Manuscript received on 27 May 2024 | Revised Manuscript received on 04 June 2024 | Manuscript Accepted on 15 June 2024 | Manuscript published on 30 June 2024.

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