Infrared Technology, Volume. 46, Issue 2, 129(2024)
Research Status of Local Defect Detection Technology of Ultraviolet Image Intensifier Field of View
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DING Xiwen, CHENG Hongchang, YUAN Yuan, ZHANG Ruoyu, YANG Shuning, YANG Ye, DANG Xiaogang. Research Status of Local Defect Detection Technology of Ultraviolet Image Intensifier Field of View[J]. Infrared Technology, 2024, 46(2): 129
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Received: May. 12, 2023
Accepted: --
Published Online: Jul. 31, 2024
The Author Email: Xiwen DING (610698817@qq.com。)
CSTR:32186.14.