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Severe Convective Weather Classification in Remote Sensing Images by Semantic Segmentation

机译:遥感影像中强对流天气分类的语义分割

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Severe convective weather is a catastrophic weather that can cause great harm to the public. One of the key studies for meteorological practitioners is how to recognize severe convection weather accurately and effectively, and it is also an important issue in government climate risk management. However, most existing methods extract features from satellite data by classifying individual pixels instead of using tightly integrated spatial information, ignoring the fact the clouds are highly dynamic. In this paper, we propose a new classification model, which is based on image segmentation of deep learning. And it uses U-net architecture as the technology platform to identify all weather conditions in the datasets accurately. As heavy rainfall is one of the most frequent and widespread server weather hazards, when the storms come ashore with high speed of wind, it makes the precipitation time longer and causes serious damage in turn. Therefore, we suggest a new evaluation metric to evaluate the performance of detecting heavy rainfall. Compared with existing methods, the model based on Himawari-8 dataset has a better performance. Further, we explore the representations learned by our model in order to better understand this important dataset. The results play a crucial role in the prediction of climate change risks and the formulation of government policies on climate change.
机译:严重的对流天气是灾难性天气,可能对公众造成极大伤害。气象从业人员的关键研究之一是如何准确有效地识别强对流天气,这也是政府气候风险管理中的重要问题。但是,大多数现有方法通过对单个像素进行分类而不是使用紧密集成的空间信息来从卫星数据中提取特征,而忽略了云的高度动态性。在本文中,我们提出了一种新的分类模型,该模型基于深度学习的图像分割。它使用U-net架构作为技术平台,以准确识别数据集中的所有天气情况。由于暴雨是服务器上最常见,最普遍的天气灾害之一,当风暴以高风速登陆时,这会使降水时间变长,进而造成严重的破坏。因此,我们建议一种新的评估指标来评估暴雨检测的性能。与现有方法相比,基于Himawari-8数据集的模型具有更好的性能。此外,我们探索了模型学习到的表示形式,以便更好地理解这个重要的数据集。研究结果在预测气候变化风险和制定政府应对气候变化政策方面发挥着至关重要的作用。

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