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An anti-aliasing POCS interpolation method for regularly undersampled seismic data using curvelet transform

Journal of applied geophysics, v.172, 2020년, pp.103894 -   

Zhang, Hua (State Key Laboratory of Nuclear Resources and Environment, East China university of Technology) ,  Zhang, Hengqi (State Key Laboratory of Nuclear Resources and Environment, East China university of Technology) ,  Zhang, Junhu (State Key Laboratory of Nuclear Resources and Environment, East China university of Technology) ,  Hao, Yaju (State Key Laboratory of Nuclear Resources and Environment, East China university of Technology) ,  Wang, Benfeng (State Key Laboratory of Marine Geology, School of Ocean and Earth Science, Institute for Advanced Study, Tongji University)

Abstract AI-Helper 아이콘AI-Helper

Abstract Seismic data interpolation are considered the key step in data pre-processing. Most current interpolation methods are just suitable for random undersampled cases. To deal with regular undersampled issue, we propose a novel anti-aliasing Projection Onto Convex Sets (POCS) interpolation meth...

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