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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.38 no.6 pt.1, 2022년, pp.1407 - 1422
박정묵 (국립산림과학원 산림ICT연구센터) , 심우담 (강원대학교 산림환경과학대학 산림경영학과) , 김경민 (강원대학교 산림환경과학대학 산림경영학과) , 임중빈 (국립산림과학원 산림ICT연구센터) , 이정수 (강원대학교 산림환경과학대학 산림과학부)
This study was conducted to classify tree species and assess the classification accuracy, using SE-Inception, a classification-based deep learning model. The input images of the dataset used Worldview-3 and GeoEye-1 images, and the size of the input images was divided into 10 × 10 m, 30 ...
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