Cloud discrimination using K Nearest Neighbors classifier: Application to dataset generated by Sétif RADAR (Algeria) and MSG-SEVIRI satellite images

F. Mokdad, B. Haddad, Z. Bala, Ilhem Tiblali
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Abstract

Efficient classification depends strongly on the quality of the dataset used in experiments. In this paper, we generated a dataset consists of six spectral features extracted from the MSG-SEVIRI satellite images. Each feature represents the brightness temperature of the corresponding pixel. We are based on meteorological radar images acquired in Sétif region (Algeria) to assign a class to each feature vector, where we take account of the spatial and spectral resolution difference between radar and satellite images. We are interested to the identification of raining clouds, non-raining clouds and absence of clouds. The application of K Nearest Neighbors (KNN) classifier to the dataset generated performs very well. Using Euclidean metric for classifications, the overall accuracy is 99.46% and the Kappa coefficient attaint 99.13%. In order to validate the results obtained experimentally we have performed an in situ validation using eight ground measurements over the north Algeria. By computing different evaluation measure parameters, experimental results demonstrate the efficiency of the proposed methodology in discriminating between raining and non-raining clouds.
基于K近邻分类器的云识别:应用于ssamtif RADAR(阿尔及利亚)和MSG-SEVIRI卫星图像生成的数据集
有效的分类很大程度上取决于实验中使用的数据集的质量。在本文中,我们生成了一个由MSG-SEVIRI卫星图像提取的六个光谱特征组成的数据集。每个特征表示对应像素的亮度温度。我们根据在ssametf地区(阿尔及利亚)获得的气象雷达图像为每个特征向量分配一个类别,其中我们考虑到雷达和卫星图像之间的空间和光谱分辨率差异。我们对雨云、非雨云和无云的识别感兴趣。K近邻(KNN)分类器对生成的数据集的应用效果非常好。采用欧几里得度量进行分类,总体准确率为99.46%,Kappa系数达到99.13%。为了验证实验获得的结果,我们在阿尔及利亚北部使用八次地面测量进行了现场验证。通过计算不同的评价度量参数,实验结果证明了该方法在区分雨云和非雨云方面的有效性。
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