Optimizing Image Size of Convolutional Neural Networks for Producing Remote Sensing-based Thematic Map |
Jo, Hyun-Woo
(Department of Environmental Science and Ecological Engineering, Korea University)
Kim, Ji-Won (Department of Climatic Environment, Korea University) Lim, Chul-Hee (Institute of Life Science and Natural Resources, Korea University) Song, Chol-Ho (Department of Environmental Science and Ecological Engineering, Korea University) Lee, Woo-Kyun (Department of Environmental Science and Ecological Engineering, Korea University) |
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