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New algorithm of target classification in polarimetric SAR

机译:Polarimetric SAR中目标分类的新算法

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The different approaches used for target decomposition (TD) theory in radar polarimetry are reviewed and three main types of theorems are introduced: those based on Mueller matrix, those using an eigenvector analysis of the coherency matrix, and those employing coherent decomposition of the scattering matrix. Support vector machine (SVM), as a novel approach in pattern recognition, has demonstrated success in many fields. A new algorithm of target classification, by combining target decomposition and the support vector machine, is proposed.To conduct the experiment, the polarimetric synthetic aperture radar (SAR) data are used. Experimental results show that it is feasible and efficient to target classification by applying target decomposition to extract scattering mechanisms, and the effects of kernel function and its parameters on the classification efficiency are significant.
机译:雷达偏振仪中用于目标分解(TD)理论的不同方法被审查,并介绍了三种主要类型的定理:基于穆勒基质的那些,使用相干矩阵的特征向量分析的那些,以及采用散射矩阵的相干分解的那些。 。支持向量机(SVM),作为模式识别的新方法,在许多领域中表现出成功。提出了一种新的目标分类算法,通过组合目标分解和支持向量机。进行实验,使用偏振合成孔径雷达(SAR)数据。实验结果表明,通过施加目标分解来提取散射机制,对目标分类是可行和有效的,以及核功能的影响及其对分类效率的影响是显着的。

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