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Convolutional Neural Networks Based Image Classification for Himawari-8 Stationary Satellite Imagery

机译:基于卷积神经网络的Himawari-8静止卫星图像的图像分类

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Cloud plays an extremely important role in the atmosphere, which directly influences the radiation balance and indicates the potential weather and climate change. It also builds up the strength of locally thermal and dynamic processes. A novel convolutional neural networks (CNNs) approach, namely Satellites Model (SatMod), is introduced to satellite imagery classification, which performs well under multiple contrails conditions. We take contrails into account in the satellite imagery classification, which leads to satellite imagery classification more challenging than existing satellite imagery database, as clear understanding of contrails would facilitate the study of the effects of contrails on global warming. A novel dataset based on Himawari-8 stationary satellite imagery (HSSI) is proposed to represent 5 different scenes. Extensive experiments and evaluation indicate that the proposed SatMod achieves a good performance on HSSI database.
机译:云在大气中起着极其重要的作用,它直接影响辐射的平衡并表明潜在的天气和气候变化。它还增强了局部热过程和动态过程的强度。一种新颖的卷积神经网络(CNN)方法,即卫星模型(SatMod),被引入到卫星图像分类中,该方法在多种凝结条件下表现良好。我们在卫星影像分类中考虑了凝结尾迹,这导致卫星影像分类比现有的卫星影像数据库更具挑战性,因为对凝结尾迹的清晰理解将有助于研究凝结尾迹对全球变暖的影响。提出了一种基于Himawari-8静止卫星图像(HSSI)的新颖数据集来表示5个不同的场景。大量的实验和评估表明,所提出的SatMod在HSSI数据库上取得了良好的性能。

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