• Study On Optical Communications
  • Vol. 49, Issue 3, 19 (2023)
Qi-feng GUAN*, Su ZHAO, and Xiao-rong ZHU
Author Affiliations
  • Jiangsu Key Laboratory of Wireless Communication, Nanjing University of Posts and Telecommunications, Nanjing 210003, China
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    DOI: 10.13756/j.gtxyj.2023.03.004 Cite this Article
    Qi-feng GUAN, Su ZHAO, Xiao-rong ZHU. High Precision Traffic Identification Method based on GAN and XGBoost Fusion[J]. Study On Optical Communications, 2023, 49(3): 19 Copy Citation Text show less
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    Qi-feng GUAN, Su ZHAO, Xiao-rong ZHU. High Precision Traffic Identification Method based on GAN and XGBoost Fusion[J]. Study On Optical Communications, 2023, 49(3): 19
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