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[국내논문] Semi-Supervised Land Cover Classification of Remote Sensing Imagery Using CycleGAN and EfficientNet

KSCE journal of civil engineering, v.27 no.4, 2023년, pp.1760 - 1773  

Kwak, Taehong ,  Kim, Yongil

초록이 없습니다.

참고문헌 (44)

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