• Chinese Journal of Quantum Electronics
  • Vol. 39, Issue 6, 927 (2022)
Huimin MA1、*, Lei TAN1, Jinghui ZHANG2, Pengfei ZHANG3, Xiaomei NING1, Haiqiu LIU1, and Yanwei GAO1
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
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    DOI: 10.3969/j.issn.1007-5461.2022.06.007 Cite this Article
    MA Huimin, TAN Lei, ZHANG Jinghui, ZHANG Pengfei, NING Xiaomei, LIU Haiqiu, GAO Yanwei. Review of co-phasing error detection for synthetic aperture imaging system based on deep learning[J]. Chinese Journal of Quantum Electronics, 2022, 39(6): 927 Copy Citation Text show less
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    MA Huimin, TAN Lei, ZHANG Jinghui, ZHANG Pengfei, NING Xiaomei, LIU Haiqiu, GAO Yanwei. Review of co-phasing error detection for synthetic aperture imaging system based on deep learning[J]. Chinese Journal of Quantum Electronics, 2022, 39(6): 927
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