2022
DOI: 10.1155/2022/4354198
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Intensive Cold‐Air Invasion Detection and Classification with Deep Learning in Complicated Meteorological Systems

Abstract: Faster R-CNN architecture is used to solve the problems of moving path uncertainty, changeable coverage, and high complexity in cold-air induced large-scale intensive temperature-reduction (ITR) detection and classification, since those problems usually lead to path identification biases as well as low accuracy and generalization ability of recognition algorithm. In this paper, an improved recognition method of national ITR (NITR) path in China based on faster R-CNN in complicated meteorological systems is pro… Show more

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