Chinese Optics, Volume. 16, Issue 5, 1022(2023)
Super-resolution reconstruction for colorectal endoscopic images based on a residual network
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Yue-kun ZHENG, Ming-feng GE, Zhi-min CHANG, Wen-fei DONG. Super-resolution reconstruction for colorectal endoscopic images based on a residual network[J]. Chinese Optics, 2023, 16(5): 1022
Category: Original Article
Received: Nov. 29, 2022
Accepted: Mar. 15, 2023
Published Online: Oct. 27, 2023
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