首页> 外文会议>2007 1st Asian and Pacific Conference on Synthetic Aperture Radar Proceedings >Experimental Reaserch of Unsupervised Cameron/ML Classification Method for Fully Polarimetric SAR Data
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Experimental Reaserch of Unsupervised Cameron/ML Classification Method for Fully Polarimetric SAR Data

机译:全极化SAR数据无监督Cameron / ML分类方法的实验研究

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Fully PolSAR data provided by the NASA/JPL laboratory are widely used to classify PolSAR image. In this paper, an unsupervised Cameron/ML approach is proposed to classify airborne fully polarimetric data collected by a research institute in China. Cameron’s method is used to initially classify the PolSAR image firstly. Secondly the initial classification map defines training sets for the maximum likelihood (ML) classifier. The classified results are then used to define training sets for the next iteration. The advantages of this method are the automated classification, and the interpretation of each class based on scattering mechanism. Formula of Cameron classification for the very measured data is also obtained here. The experiment demonstrates the proposed approach dramatically improves the classification result compared with the Cameron method.
机译:NASA / JPL实验室提供的完全PolSAR数据被广泛用于对PolSAR图像进行分类。本文提出了一种无监督的Cameron / ML方法来对中国某研究所收集的机载全极化数据进行分类。首先使用Cameron的方法对PolSAR图像进行分类。其次,初始分类图为最大似然(ML)分类器定义训练集。然后将分类的结果用于定义下一个迭代的训练集。该方法的优点是自动分类,并基于散射机制对每个类别进行解释。这里也获得了非常测量数据的卡梅伦分类公式。实验表明,与Cameron方法相比,该方法大大提高了分类结果。

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