Retrieval of Melt Ponds on Arctic Multiyear Sea Ice in Summer from TerraSAR-X Dual-Polarization Data Using Machine Learning Approaches: A Case Study in the Chukchi Sea with Mid-Incidence Angle Data
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Duk-jin Kim | Jungho Im | Hyangsun Han | Miae Kim | Seongmun Sim | Jin-Woo Kim | Sung-Ho Kang | J. Im | Miae Kim | Hyangsun Han | Sung-Ho Kang | Jinwoo Kim | Duk‐jin Kim | Seongmun Sim
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