Meteorology satellite visible light images is critical for meteorology support and forecast. However, there is no such kind of data during night time. To overcome this, we propose a method based on deep learning to create synthetic satellite visible light images during night. Specifically, to produce more realistic products, we train a Generative Adversarial Networks (GAN) model to generate visible light images given the corresponding satellite infrared images and numerical weather prediction(NWP) products. To better model the nonlinear relationship from infrared data and NWP products to visible light images, we propose to use the channel-wise attention mechanics, e.g., SEBlock to quantitative weight the input channels. The experiments based on the ECMWF NWP products and FY-4A meteorology satellite visible light and infrared channels date show that the proposed methods can be effective to create realistic synthetic satellite visible light images during night.
翻译:气象卫星可见光图像对于气象学支持和预报至关重要,然而,夜间没有此类数据,为此,我们提议采用基于深层学习的方法,在夜间制作合成卫星可见光图像,具体地说,为了生产更现实的产品,我们培训了“创能对准网络”模型,以根据相应的卫星红外图像和数字天气预报产品生成可见光图像。为了更好地模拟红外数据和NWP产品与可见光图像之间的非线性关系,我们提议使用频道式关注力学,例如SEBlock到输入通道的定量重量。基于ECMWNWP产品和FY-4A气象卫星可见光和红外信道日期的实验表明,拟议的方法可以有效地在夜间制作现实的合成卫星可见光图像。