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NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.38 no.6 pt.1, 2022년, pp.1505 - 1514
강원빈 (서울대학교 건설환경공학부) , 정민영 (서울대학교 공학연구원) , 김용일 (서울대학교 건설환경공학부)
Image matching is a crucial preprocessing step for effective utilization of multi-temporal and multi-sensor very high resolution (VHR) satellite images. Deep learning (DL) method which is attracting widespread interest has proven to be an efficient approach to measure the similarity between image pa...
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