Metal surface defect detection has been a challenge in the industrial field. The current metal surface defect algorithms target only at a few types of defects and fail to perform well on defects with different scales. In this paper, a large number of metal surface defects are studied based on GC10-DET data set. An improved yolov5 detection network is designed targeting defects of various scales, especially of small-scaled objects, using a specific data enhancement method to regularize and an effective loss function to address data imbalance caused by small-scaled object defects. Finally, the comparative experiment on GC10-DET data set proves the major improvements on accuracy superiority of the proposed method.
CITATION STYLE
Wang, K., Teng, Z., & Zou, T. (2022). Metal Defect Detection Based on Yolov5. In Journal of Physics: Conference Series (Vol. 2218). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/2218/1/012050
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