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MULTIPLE-KERNEL LEARNING-BASED UNMIXING ALGORITHM FOR ESTIMATION OF CLOUD FRACTIONS WITH MODIS AND CLOUDSAT DATA

机译:基于多核学习的解密算法,用于估计MODIS和CloudSAT数据的云分数

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Detection of clouds in satellite-generated radiance images, including those from MODIS, is an important first step in many applications of these data. In this paper we apply spectral unmixing to this problem with the aim of estimating subpixel cloud fractions, as opposed to identification only of whether or not a pixel radiance contains cloud contributions. We formulate the spectral unmixing approach in terms of multiple-kernel learning (MKL). To this end we propose a MKL-based unmixing algorithm that drives a multiple-kernel description of cloud, enabling estimation of sub-pixel cloud fractions. This approach is based on supervised learning. We generate training and testing samples by using CloudSat and CALIPSO data to compute cloud fractions within individual MODIS pixels. Results of our study on limited data (1875 training and testing MODIS pixels along with their CloudSat and CALIPSO based sub-pixel cloud fractions) show that the proposed algorithm can effectively estimate sub-pixel MODIS cloud fraction and outperforms support vector machine (SVM) in terms of estimation performance.
机译:在包括MODIS中的卫星生成的辐射图像中的云检测云,是这些数据的许多应用中的重要第一步。在本文中,我们在估计子像素云分数的目的中,应用频谱解密到这个问题,而不是识别像素辐射是否包含云贡献。我们在多内核学习(MKL)方面制定光谱解密方法。为此,我们提出了一种基于MKL的解密算法,驱动云的多核描述,从而能够估计子像素云分数。这种方法是基于监督学习。我们通过使用CloudSat和Calipso数据来生成培训和测试样本,以计算各个MODIS像素内的云分数。我们对有限数据研究的研究结果(1875年训练和测试MODIS像素以及其CloudSat和Calipso基于的子像素云分数)表明,所提出的算法可以有效地估计子像素MODIS云分数和优于支持向量机(SVM)估计绩效条款。

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