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NTIS 바로가기대한임베디드공학회논문지 = IEMEK Journal of embedded systems and applications, v.17 no.3, 2022년, pp.129 - 138
게이뷸라예프 압둘라지즈 (Kumoh Nat'l Institute of Technology) , 이나현 (Kumoh Nat'l Institute of Technology) , 이기환 (Kumoh Nat'l Institute of Technology) , 김태형 (Kumoh Nat'l Institute of Technology)
Collecting and labeling sufficient training data, which is essential to deep learning-based visual inspection, is difficult for manufacturers to perform because it is very expensive. This paper presents a steel plate surface defect detection system with industrial-grade detection performance by trai...
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