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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Four-component scattering model for polarimetric SAR image decomposition
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Four-component scattering model for polarimetric SAR image decomposition

机译:极化SAR图像分解的四分量散射模型

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A four-component scattering model is proposed to decompose polarimetric synthetic aperture radar (SAR) images. The covariance matrix approach is used to deal with the nonreflection symmetric scattering case. This scheme includes and extends the three-component decomposition method introduced by Freeman and Durden dealing with the reflection symmetry condition that the co-pol and the cross-pol correlations are close to zero. Helix scattering power is added as the fourth component to the three-component scattering model which describes surface, double bounce, and volume scattering. This helix scattering term is added to take account of the co-pol and the cross-pol correlations which generally appear in complex urban area scattering and disappear for a natural distributed scatterer. This term is relevant for describing man-made targets in urban area scattering. In addition, asymmetric volume scattering covariance matrices are introduced in dependence of the relative backscattering magnitude between HH and VV. A modification of probability density function for a cloud of dipole scatterers yields asymmetric covariance matrices. An appropriate choice among the symmetric or asymmetric volume scattering covariance matrices allows us to make a best fit to the measured data. A four-component decomposition algorithm is developed to deal with a general scattering case. The result of this decomposition is demonstrated with L-band Pi-SAR images taken over the city of Niigata, Japan.
机译:提出了一种四分量散射模型来分解极化合成孔径雷达(SAR)图像。协方差矩阵方法用于处理非反射对称散射情况。该方案包括并扩展了Freeman和Durden提出的三分量分解方法,该方法处理了co-pol和cross-pol相关性接近于零的反射对称条件。螺旋线散射力作为第四分量添加到三分量散射模型中,该模型描述了表面散射,双反射和体积散射。添加此螺旋散射项时要考虑到co-pol和cross-pol相关性,这些相关性通常出现在复杂的市区散射中,而对于自然分布的散射体则消失。该术语与描述市区散射中的人造目标有关。此外,根据HH和VV之间的相对反向散射幅度,引入了不对称体积散射协方差矩阵。对偶极子散射云的概率密度函数的修改会产生不对称协方差矩阵。在对称或不对称体积散射协方差矩阵中进行适当选择可以使我们最适合测量数据。开发了一种四分量分解算法来处理一般的散射情况。通过在日本新泻市拍摄的L波段Pi-SAR图像证明了这种分解的结果。

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