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Classification of Surface Defect on Steel Strip by KNN Classifier

Cheol Ho Kim, Se Ho Choi, Won Jong Joo, Gi Bum Kim
JKSPE 2006;23(8):80-88.
Published online: August 1, 2006
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This paper proposes a new steel strip surface inspection system. The system acquires bright and dark field images of defects by using a stroboscopic IR LED illuminator and area camera system and the defect images are preprocessed and segmented in real time for feature extraction. 4113 defect samples of hot rolled steel strip are used to develop KNN (k-Nearest Neighbor) classifier which classifies the defects into 8 different types. The developed KNN classifier demonstrates about 85% classifying performance which is considered very plausible result.

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Classification of Surface Defect on Steel Strip by KNN Classifier
J. Korean Soc. Precis. Eng.. 2006;23(8):80-88.   Published online August 1, 2006
Download Citation

Download a citation file in RIS format that can be imported by all major citation management software, including EndNote, ProCite, RefWorks, and Reference Manager.

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Classification of Surface Defect on Steel Strip by KNN Classifier
J. Korean Soc. Precis. Eng.. 2006;23(8):80-88.   Published online August 1, 2006
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