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An improved detection and feature retrieval method of anisotropic scattering for multi-aspect PolSAR data processing based on DRIA framework

机译:基于DRIA框架的多角度PolSAR数据各向异性散射检测与特征检索的改进方法

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Multi-aspect PolSAR data contains polarimetric properties from different look angle. Multi-aspect polarimetric information can be applied in geometric measurement, target identifying, precise classification. In order to characterize anisotropic target, anisotropic and isotropic scattering need to be separated from the raw data. A detecting-removing-incoherent-adding (DRIA) framework, presented in Li Yang's doctoral dissertation, suggests to remove the anisotropic scattering, gain a removal series and incoherent integrate the reserved data. In this paper, in order to identify anisotropic target, an anisotropic scattering model is raised. An improved detection and feature retrieval method is presented base on DRIA framework. The equivalent number of looks (ENL) used in Li Yang's dissertation is proved to bring measurement error to the result. The anisotropic scattering can be correctly identified after the error is restored. Two kinds of maximum-likelihood ratio are proved to gain the same result in sort. Three features are retrieved from the removal series to describe the anisotropic scattering. The experimental data is circular SAR (CSAR) data acquired by the Institute of Electronics airborne CSAR system at P-band.
机译:多方面的PolSAR数据包含来自不同视角的极化特性。多方位极化信息可应用于几何测量,目标识别,精确分类。为了表征各向异性目标,需要将各向异性和各向同性散射与原始数据分开。李阳博士论文提出了一种检测-去除-非相干相加(DRIA)框架,建议去除各向异性散射,获得去除序列,并对所保留的数据进行非相干积分。为了识别各向异性目标,提出了各向异性散射模型。提出了一种基于DRIA框架的改进的检测与特征检索方法。事实证明,李扬论文中使用的等效外观数(ENL)会给结果带来测量误差。恢复误差后,可以正确识别各向异性散射。两种最大似然比被证明在排序上获得相同的结果。从去除序列中检索了三个特征来描述各向异性散射。实验数据是由电子学会机载CSAR系统在P波段获取的圆形SAR(CSAR)数据。

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