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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.38 no.5 pt.2, 2022년, pp.707 - 723
정시훈 (울산과학기술원 도시환경공학과) , 추민기 (울산과학기술원 도시환경공학과) , 임정호 (울산과학기술원 도시환경공학부) , 조동진 (울산과학기술원 도시환경공학과)
Although satellite-based sea surface temperature (SST) is advantageous for monitoring large areas, spatiotemporal data gaps frequently occur due to various environmental or mechanical causes. Thus, it is crucial to fill in the gaps to maximize its usability. In this study, daily SST composite fields...
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