• Opto-Electronic Engineering
  • Vol. 46, Issue 11, 180489 (2019)
Shen Mingyu*, Yu Pengfei, Wang Ronggui, Yang Juan, and Xue Lixia
Author Affiliations
  • [in Chinese]
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    DOI: 10.12086/oee.2019.180489 Cite this Article
    Shen Mingyu, Yu Pengfei, Wang Ronggui, Yang Juan, Xue Lixia. Image super-resolution via multi-path recursive convolutional network[J]. Opto-Electronic Engineering, 2019, 46(11): 180489 Copy Citation Text show less
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    Shen Mingyu, Yu Pengfei, Wang Ronggui, Yang Juan, Xue Lixia. Image super-resolution via multi-path recursive convolutional network[J]. Opto-Electronic Engineering, 2019, 46(11): 180489
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