基于图像复原的衍射望远镜暗弱目标成像 下载: 1064次
杨静静, 王帅, 文良华, 杨平, 杨伟, 官春林, 许冰. 基于图像复原的衍射望远镜暗弱目标成像[J]. 光学学报, 2020, 40(14): 1411005.
Jingjing Yang, Shuai Wang, Lianghua Wen, Ping Yang, Wei Yang, Chunlin Guan, Bing Xu. Faint-Object Imaging of Diffractive Telescopes Based on Image Restoration[J]. Acta Optica Sinica, 2020, 40(14): 1411005.
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杨静静, 王帅, 文良华, 杨平, 杨伟, 官春林, 许冰. 基于图像复原的衍射望远镜暗弱目标成像[J]. 光学学报, 2020, 40(14): 1411005. Jingjing Yang, Shuai Wang, Lianghua Wen, Ping Yang, Wei Yang, Chunlin Guan, Bing Xu. Faint-Object Imaging of Diffractive Telescopes Based on Image Restoration[J]. Acta Optica Sinica, 2020, 40(14): 1411005.