Infrared Technology, Volume. 47, Issue 4, 445(2025)
Electronic Zooming of Infrared Image Based on Lightweight Multi-scale Aggregation Network
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LIU Xin, ZHANG Bin. Electronic Zooming of Infrared Image Based on Lightweight Multi-scale Aggregation Network[J]. Infrared Technology, 2025, 47(4): 445