Chien-Yi Huang's scientific contributions

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Publications (1)


Figure 2. Appearance characteristics of each gold finger defect category.
Figure 6. Faster R-CNN framework.
Figure 7. Position correction diagram.
Figure 8. Data training validation.
Image acquisition equipment model and specifications.

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Applying Machine Learning to Construct a Printed Circuit Board Gold Finger Defect Detection System
  • Article
  • Full-text available

March 2024

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38 Reads

Electronics

Chien-Yi Huang

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Pei-Xuan Tsai

Machine vision systems use industrial cameras’ digital sensors to collect images and use computers for image pre-processing, analysis, and the measurements of various features to make decisions. With increasing capacity and quality demands in the electronic industry, incoming quality control (IQC) standards are becoming more and more stringent. The industry’s incoming quality control is mainly based on manual sampling. Although it saves time and costs, the miss rate is still high. This study aimed to establish an automatic defect detection system that could quickly identify defects in the gold finger on printed circuit boards (PCBs) according to the manufacturer’s standard. In the general training iteration process of deep learning, parameters required for image processing and deductive reasoning operations are automatically updated. In this study, we discussed and compared the object detection networks of the YOLOv3 (You Only Look Once, Version 3) and Faster Region-Based Convolutional Neural Network (Faster R-CNN) algorithms. The results showed that the defect classification detection model, established based on the YOLOv3 network architecture, could identify defects with an accuracy of 95%. Therefore, the IQC sampling inspection was changed to a full inspection, and the surface mount technology (SMT) full inspection station was canceled to reduce the need for inspection personnel.

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