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NTIS 바로가기컴퓨터그래픽스학회논문지 = Journal of the Korea Computer Graphics Society, v.28 no.2, 2022년, pp.11 - 19
장유진 (울산과학기술원 인공지능대학원) , 유재준 (울산과학기술원 인공지능대학원) , 홍헬렌 (서울여자대학교 소프트웨어융합학과)
Recently, various researches on medical image generation have been suggested, and it becomes crucial to accurately evaluate the quality and diversity of the generated medical images. For this purpose, the expert's visual turing test, feature distribution visualization, and quantitative evaluation th...
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