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NTIS 바로가기한국산림과학회지 = Journal of korean society of forest science, v.111 no.3, 2022년, pp.435 - 449
이복남 (경북대학교 빅데이터 기반 글로컬 Forest Science 4.0 전문인력양성센터) , 정건휘 (경북대학교 임학과) , 류지연 (경북대학교 임학과) , 권경원 (경북대학교 임학과) , 임종수 (국립산림과학원 산림ICT연구센터) , 박주원 (경북대학교 산림과학.조경학부)
Forest canopy height is an indispensable vertical structure parameter that can be used for understanding forest biomass and carbon storage as well as for managing a sustainable forest ecosystem. Plot-based field surveys, such as the national forest inventory, have been conducted to provide estimates...
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