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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.38 no.5 pt.2, 2022년, pp.695 - 706
김지용 (서울대학교 스마트도시공학) , 곽태홍 (서울대학교 스마트도시공학) , 김용일 (서울대학교 스마트도시공학)
Medium and high-resolution optical satellites have proven their effectiveness in detecting wildfire areas. However, smoke plumes generated by wildfire scatter visible light incidents on the surface, thereby interrupting accurate monitoring of the area where wildfire occurs. Therefore, a technology t...
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