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영상 분류를 위한 준지도 학습 기법의 분류와 동작 원리의 이해  

Chae, Mun-Ju (동국대학교)
Park, Jae-Hyeon (동국대학교)
Jo, Seong-In (동국대학교)
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Broadcasting and Media Magazine / v.27, no.2, 2022 , pp. 10-18 More about this Journal
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