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A Neural Network Sea-Ice Cloud Classification Algorithm for Copernicus Sentinel-3 Sea and Land Surface Temperature Radiometer

机译:哥白尼前哨3海陆表面温度辐射计的神经网络海冰云分类算法

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A Neural Network approach to classify Sentinel-3 sea and land surface temperature radiometer (SLSTR) pixels over polar regions is presented. The proposed approach is based on a careful preliminary analysis aimed to simulate SLSTR observation by means of MODIS data. The latter have been considered because of the long available time series and the quality of cloud mask products. A large set of MODIS AQUA and TERRA products has been applied to develop the training set of the Neural Network classificator that has been tuned to discriminate clear ocean, clouds and sea-ice surfaces on the scene.
机译:提出了一种神经网络方法,对极区上的Sentinel-3海洋和陆地表面温度辐射计(SLSTR)像素进行分类。所提出的方法基于仔细的初步分析,旨在通过MODIS数据模拟SLSTR观测。之所以考虑使用后者,是因为可用的时间序列很长,而且云掩码产品的质量也很高。大量MODIS AQUA和TERRA产品已用于开发神经网络分类器的训练集,该训练器已进行调整以区分场景中清晰的海洋,云层和海冰表面。

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