• Laser Journal
  • Vol. 45, Issue 12, 1 (2024)
XIE Hui1, DUAN Meng1, WU Wei1, ZHANG Yunqiang1..., PAN Guoqing1, WANG Weiqiang1 and MU Shibo2|Show fewer author(s)
Author Affiliations
  • 1China airborne missile academy, Luoyang Henan 471009, China
  • 2The First Military Representative Office of Air Force Equipment Department in Luoyang, Luoyang Henan 471009, China
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    DOI: 10.14016/j.cnki.jgzz.2024.12.001 Cite this Article
    XIE Hui, DUAN Meng, WU Wei, ZHANG Yunqiang, PAN Guoqing, WANG Weiqiang, MU Shibo. The review of snapshot hyperspectral imaging technology based on coded compression[J]. Laser Journal, 2024, 45(12): 1 Copy Citation Text show less
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    XIE Hui, DUAN Meng, WU Wei, ZHANG Yunqiang, PAN Guoqing, WANG Weiqiang, MU Shibo. The review of snapshot hyperspectral imaging technology based on coded compression[J]. Laser Journal, 2024, 45(12): 1
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