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Clustering and classification based on expert knowledge propagation using probabilistic self-organizing map(PRSOM): application to the classification of satellite ocean color TOA observations

机译:基于专家知识传播的概率自组织图(PRSOM)聚类与分类:在卫星海洋颜色TOA观测值分类中的应用

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The Kohonen map with PRSOM was used to analyze a time sequence of SeaWifs images These images were observed on the Mediterranean Sea from the 6/sup th/ of August to the 12/sup th/. We processed the normalized reflectance of full TOA spectrum by first using a 20/spl times/20 Kohonen map and then we aggregated these 400 classes into 50 classes by using the PRSOM algorithm. The classifier was trained on a one year (1999) Mediterranean SeaWifs images using a temporal homogeneity. (2 images/month). We have developed an automatic labeling procedure based on the SeaWifs LUT used to invert the TOA signal. The labeling procedure allows us to identify four different aerosol type (Coastal, Maritime, Tropospheric Dust, Oceanic) and their corresponding optical thickness. We clearly see an important event of Saharian dust coming from the Sahara, crossing the Mediterranean Sea and invading North of the Mediterranean. A meteorological map taken the 10/sup th/ of August shows a strong South West wind supporting the above interpretation. This study clearly shows the possibility to use the above algorithm for automatically classify the aerosols at the Top of the Atmosphere.
机译:使用带有PRSOM的Kohonen映射来分析SeaWifs图像的时间序列。这些图像是从8月6日到8月12日在地中海上观察到的。我们首先使用20 / spl times / 20 Kohonen贴图处理了整个TOA光谱的归一化反射率,然后使用PRSOM算法将这400个类别汇总为50个类别。使用时间均匀性对分类器进行了为期一年(1999年)的Mediterranean SeaWifs图像的训练。 (每月2张图片)。我们已经基于用于反转TOA信号的SeaWifs LUT开发了一种自动标记程序。标签程序使我们能够识别四种不同的气溶胶类型(沿海,海洋,对流层粉尘,海洋)和它们相应的光学厚度。我们清楚地看到一个重要事件,即撒哈拉大沙漠的尘埃从撒哈拉沙漠中穿过地中海,并侵入地中海北部。八月10日(上)拍摄的气象图显示,强烈的西南风支持上述解释。这项研究清楚地表明,可以使用上述算法对大气顶部的气溶胶进行自动分类。

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