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arxiv 1812.10915 v1 pith:DZNF4MVE submitted 2018-12-28 cs.CV

Spatiotemporal Data Fusion for Precipitation Nowcasting

classification cs.CV
keywords fusionnowcastingprecipitationdataground-basedradarsalgorithmbecome
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Precipitation nowcasting using neural networks and ground-based radars has become one of the key components of modern weather prediction services, but it is limited to the regions covered by ground-based radars. Truly global precipitation nowcasting requires fusion of radar and satellite observations. We propose the data fusion pipeline based on computer vision techniques, including novel inpainting algorithm with soft masking.

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