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A cloud detection algorithm for AATSR data, optimized for daytime observations in Canada

机译:针对AATSR数据的云检测算法,针对加拿大的白天观测进行了优化

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To extract information about the Earth's surface from Earth Observation data, a key processing step is the separation of pixels representing clear-sky observations of land or water surfaces from observations substantially influenced by clouds. This paper presents an algorithm used for this purpose specifically for data from the AATSR sensor on ENVISAT. The algorithm is based on the structure of the SPARC cloud detection scheme developed at CCRS for AVHRR data, then modified, calibrated and validated for AATSR data. It uses a series of weighted tests to calculate per-pixel cloud presence probability, and also produces an estimate of cloud top height and a cloud shadow flag. Algorithm parameters have been optimized for daytime use in Canada, and evaluation shows good performance with a mean daytime kappa coefficient of 0.76 for the 'cloud'/'clear' classification when compared to independent validation data. Performance is independent of season, and is a dramatic improvement over the existing AATSR L1B cloud flag for Canada. The algorithm will be used at CCRS for processing AATSR data, and will form the basis of similar processing for data from the SLSTR sensors on Sentinel-3.
机译:为了从“地球观测”数据中提取有关地球表面的信息,关键的处理步骤是将代表陆地或水面的晴空观测的像素与受到云影响的观测分离。本文提出了一种专门用于ENVISAT上AATSR传感器数据的算法。该算法基于CCRS针对AVHRR数据开发的SPARC云检测方案的结构,然后针对AATSR数据进行修改,校准和验证。它使用一系列加权测试来计算每像素云的存在概率,并生成云顶高度和云阴影标记的估计值。算法参数已针对加拿大的白天使用进行了优化,评估显示出良好的性能,与独立验证数据相比,“云” /“晴天”分类的平均白天kappa系数为0.76。性能与季节无关,并且相对于加拿大现有的AATSR L1B云标志而言是显着的改进。该算法将在CCRS上用于处理AATSR数据,并将构成对Sentinel-3上SLSTR传感器数据进行类似处理的基础。

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