Constrained adversarial loss for generative adversarial network-based faithful image restoration |
Kim, Dong-Wook
(Department of Multimedia Engineering, Dongguk University)
Chung, Jae-Ryun (Department of Multimedia Engineering, Dongguk University) Kim, Jongho (Broadcasting and Media Research Laboratory, Electronics and Telecommunications Research Institute) Lee, Dae Yeol (Broadcasting and Media Research Laboratory, Electronics and Telecommunications Research Institute) Jeong, Se Yoon (Broadcasting and Media Research Laboratory, Electronics and Telecommunications Research Institute) Jung, Seung-Won (Department of Multimedia Engineering, Dongguk University) |
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