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Unsupervised classification based on non-negative eigenvalue decomposition and Wishart classifier

机译:基于非负特征值分解和Wishart分类器的无监督分类

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In this study, the authors propose an unsupervised terrain and land-use classification algorithm for polarimetric synthetic aperture radar (SAR) image analysis. Under the non-reflection symmetry condition, the non-negative eigenvalue decomposition (NNED) employing Arii volume scattering model is derived. They first apply NNED to divide pixels into three categories of surface, volume and double bounce scatterings. Then the pixels in each category are further divided into several classes based on the scattering characteristic parameter of the dominant scattering component. Utilising the initial classification result as training sets, the complex Wishart classifier can then be performed within each category or beyond categories to refine the final classification result. The effectiveness of this algorithm is demonstrated using the German Aerospace Center's E-SAR polarimetric data acquired over the Oberpfaffenhofen area in Germany.
机译:在这项研究中,作者提出了一种用于偏振合成孔径雷达(SAR)图像分析的无监督地形和土地利用分类算法。在非反射对称条件下,推导了采用Arii体积散射模型的非负特征值分解(NNED)。他们首先应用NNED将像素分为表面,体积和双反弹散射三类。然后,基于主要散射分量的散射特性参数,将每个类别中的像素进一步分为几类。利用初始分类结果作为训练集,复杂的Wishart分类器可以在每个类别内或超出类别执行,以完善最终分类结果。利用德国航空航天中心在德国Oberpfaffenhofen地区获得的E-SAR极化数据证明了该算法的有效性。

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