Journal of Qingdao University(Engineering & Technology Edition), Volume. 40, Issue 2, 106(2025)
Literature Research on Deep Learning-based Algorithms for Surface Defect Detection
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HUANG Keteng, WANG Yuqi, WANG Qing, JU Junwei, BAI Shuowei. Literature Research on Deep Learning-based Algorithms for Surface Defect Detection[J]. Journal of Qingdao University(Engineering & Technology Edition), 2025, 40(2): 106
Received: Nov. 7, 2024
Accepted: Aug. 22, 2025
Published Online: Aug. 22, 2025
The Author Email: BAI Shuowei (baishuowei1@163.com)