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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.36 no.6 pt.2, 2020년, pp.1579 - 1590
송창우 (주식회사 컨텍) , (주식회사 컨텍) , 정지훈 (주식회사 컨텍) , 홍성재 (주식회사 컨텍) , 김대희 (주식회사 컨텍) , 강주형 (주식회사 컨텍)
In this paper, spatially-adaptive denormalization (SPADE) based U-Net is proposed to detect changes by using high-resolution satellite images. The proposed network is to preserve spatial information using SPADE. Change detection methods using high-resolution satellite images can be used to resolve v...
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