A Welding Defect Detection Algorithm Based on Deep Learning

Authors

  • Yi Chen Author
  • Yan Zuo Chang Author
  • Lin Po Shang Author
  • Ze Feng Lin Author
  • Yong Qi Chen Author
  • Liu Yi Yu Author
  • Wan Ying Wu Author
  • Jun Qi Liu Author

Keywords:

Deep learning, SCConv, Weld defect, YOLOv8

Abstract

In order to meet the needs of process inspection technology for industrial equipment, image recognition technology based on deep learning has shown great potential in the field of welding defects. In this paper, an improved YOLOv8 algorithm is proposed to improve the welding defect identification ability of the workpiece. Through experimental verification on selected data sets in kaggle, this study evaluates the detection performance of YOLOv8 improved algorithm that integrates SCConv in C2f module at Backbone level. The experimental results show that the improved YOLOv8 has improved the accuracy of welding defect detection compared with the traditional version, and has certain application potential.

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Published

2025-02-22

How to Cite

A Welding Defect Detection Algorithm Based on Deep Learning. (2025). International Journal of Advanced Engineering Research and Science, 12(02). https://rehpublishing.org/index.php/ijaers/article/view/68