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Necessity on the Introduction of UAV and Hyperspectral Image for Fluvial Remote Sensing  

Yu, Ho-Jun (단국대학교 공과대학 토목환경공학과)
Kim, Dong-Su (단국대학교 공과대학 토목환경공학과)
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Water for future / v.52, no.5, 2019 , pp. 42-54 More about this Journal
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