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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.40 no.2, 2024년, pp.151 - 166
박수호 ((주)아이렘기술개발 기업부설연구소) , 김흥민 ((주)아이렘기술개발 기업부설연구소) , 김영민 ((주)아이렘기술개발 기업부설연구소) , 이인지 ((주)아이렘기술개발 기업부설연구소) , 박미소 ((주)아이렘기술개발 기업부설연구소) , 김탁영 ((주)아이렘기술개발 원격탐사팀) , 장선웅 ((주)아이렘기술개발)
Coastal debris presents a significant environmental threat globally. This research sought to improve the monitoring methods for coastal debris by employing deep learning and remote sensing technologies. To achieve this, an object detection approach utilizing the You Only Look Once (YOLO)v8 model was...
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