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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.39 no.5/1, 2023년, pp.621 - 635
박현수 ((주)이노팸 인공지능팀) , 김휘영 ((주)이노팸 공간정보팀) , 정동기 ((주)이노팸)
The assessment of structural condition is a crucial process for evaluating its usability and determining the diagnostic cycle. The currently employed manpower-based methods suffer from issues related to safety, efficiency, and objectivity. To address these concerns, research based on deep learning u...
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