Vision-Based Defect Detection for Mobile Phone Cover Glass using Deep Neural Networks

논문상세정보
    • 저자 Zhi-Chao Yuan Zheng-Tao Zhang Hu Su Lei Zhang Fei Shen Feng Zhang
    • 제어번호 106063391
    • 학술지명 International Journal of Precision Engineering and Manufacturing
    • 권호사항 Vol. 19 No. 6 [ 2018 ]
    • 발행처 한국정밀공학회
    • 자료유형 학술저널
    • 수록면 801-810
    • 언어 English
    • 출판년도 2018
    • 등재정보 KCI등재
    • 소장기관 영남대학교 과학도서관
    • 판매처
    유사주제 논문( 0)

' Vision-Based Defect Detection for Mobile Phone Cover Glass using Deep Neural Networks' 의 참고문헌

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