• Infrared Technology
  • Vol. 43, Issue 3, 251 (2021)
Cen ZUO1、*, Xiujie YANG2, Jie ZHANG3, and Xuan WANG2
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
  • 3[in Chinese]
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    DOI: Cite this Article
    ZUO Cen, YANG Xiujie, ZHANG Jie, WANG Xuan. Super-resolution Enhancement of Infrared Images Using a Lightweight Dense Residual Network[J]. Infrared Technology, 2021, 43(3): 251 Copy Citation Text show less
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    [21] Guei A C, Akhloufi M. Deep learning enhancement of infrared face images using generative adversarial networks[J]. Applied Optics, 2018, 57(18): 98-107.

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    ZUO Cen, YANG Xiujie, ZHANG Jie, WANG Xuan. Super-resolution Enhancement of Infrared Images Using a Lightweight Dense Residual Network[J]. Infrared Technology, 2021, 43(3): 251
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