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NTIS 바로가기Remote sensing, v.11 no.19, 2019년, pp.2303 -
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This article presents an investigation into the problem of 3D radar echo extrapolationin precipitation nowcasting, using recent AI advances, together with a viewpoint from ComputerVision. While Deep Learning methods, especially convolutional recurrent neural networks, havebeen developed to perform e...
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