• Acta Photonica Sinica
  • Vol. 52, Issue 12, 1212001 (2023)
Han HUANG1, Zhoumiao SHI2, Yushu SHI2,3, Shu ZHANG2,3,*, and Jiacheng HU1
Author Affiliations
  • 1College of Metroogy & Measurement Engineering,University of China Jiling,Hangzhou 310018,China
  • 2Shenzhen Institute for Technology Innovation,NIM,Shenzhen 518107,China
  • 3Center for Advanced Measurement Science,National Institute of Metrology,Beijing 100029,China
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    DOI: 10.3788/gzxb20235212.1212001 Cite this Article
    Han HUANG, Zhoumiao SHI, Yushu SHI, Shu ZHANG, Jiacheng HU. Ball Surface Defect Detection Technology Based on Dark Field Line Scanning Technology[J]. Acta Photonica Sinica, 2023, 52(12): 1212001 Copy Citation Text show less
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    [2] Hangchao ZHOU, Chenchen DONG, Feng CHEN et al. A review of detection methods for surface defects of steel balls. Equipment Manufacturing Technology, 7, 47(2018).

    [3] Kaijiao WANG. Research on steel ball surface defect detection based on deep transfer learning(2022).

    [4] Zhaohui YANG, Chonghe LI, Ningning ZHOU, Xiaojun YANG. Study on influence of micro-pitting on non-repetitive run-out of high-precision ball bearings. Engineering Failure Analysis, 138, 106372(2022).

    [5] S W PARK, Y S KIM, S O LEE et al. Machine vision system design for inspecting steel bearing balls. Journal of Sensor Science and Technology, 17, 338-345(2008).

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    [11] N HAMID, N KHAN. LSM: perceptually accurate line segment merging. Journal of Electronic Imaging, 25, 1-12(2016).

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    [13] J A GIBBS, M P POUND, A P FRENCH et al. Active vision and surface reconstruction for 3D plant shoot modelling. IEEE / ACM Transactions on Computational Biology and Bioinformatics, 17, 1907-1917(2020).

    [14] Wei FANG, Kui YANG, Haiyuan LI. Propagation-based incremental triangulation for multiple views 3D reconstruction. Chinese Optics Letters, 19, 11-17(2021).

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    Han HUANG, Zhoumiao SHI, Yushu SHI, Shu ZHANG, Jiacheng HU. Ball Surface Defect Detection Technology Based on Dark Field Line Scanning Technology[J]. Acta Photonica Sinica, 2023, 52(12): 1212001
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