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POLARIMETRIC SAR DATA GMM CLASSIFICATION BASED ON IMPROVED FREEMAN INCOHERENT DECOMPOSITION

机译:Polarimetric SAR数据GMM基于改进的Freeman不连贯分解的分类

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Due to the increasing volume of available SAR Data, powerful classification processings are needed to interpret the images. GMM (Gaussian Mixture Model) is widely used to model distributions. In most applications, GMM algorithm is directly applied on raw SAR data, its disadvantage is that forest and urban areas are classified with the same label and gives problems in interpretation. In this paper, a combination between the improved Freeman decomposition and GMM classification is proposed. The improved Freeman decomposition powers are used as feature vectors for GMM classification. The E-SAR polarimetric image acquired over Oberpfaffenhofen in Germany is used as data set. The result shows that the proposed combination can solve the standard GMM classification problem.
机译:由于可用SAR数据量的增加,需要强大的分类处理来解释图像。 GMM(高斯混合模型)广泛用于建模分布。在大多数应用中,GMM算法直接应用于原始SAR数据,其缺点是森林和城市地区归类于同一标签,并在解释中发出问题。在本文中,提出了改进的Freeman分解与GMM分类之间的组合。改进的Freeman分解功率用作GMM分类的特征向量。在德国Oberpfaffenhofen获得的E-SAR偏振图像用作数据集。结果表明,所提出的组合可以解决标准的GMM分类问题。

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