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NTIS 바로가기지구물리와 물리탐사 = Geophysics and geophysical exploration, v.25 no.2, 2022년, pp.59 - 70
이동욱 (해저활성단층연구단, 한국해양과학기술원) , 문혜진 (해저활성단층연구단, 한국해양과학기술원) , 김충호 (해저활성단층연구단, 한국해양과학기술원) , 문성훈 (해저활성단층연구단, 한국해양과학기술원) , 이수환 (해저활성단층연구단, 한국해양과학기술원) , 주형태 (해저활성단층연구단, 한국해양과학기술원)
Recent studies demonstrate that machine learning has expanded in the field of seismic interpretation. Many convolutional neural networks have been developed for seismic sequence identification, which is important for seismic interpretation. However, expense and time limitations indicate that there i...
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