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首页> 外文期刊>Selected Topics in Signal Processing, IEEE Journal of >Statistical Classification for Heterogeneous Polarimetric SAR Images
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Statistical Classification for Heterogeneous Polarimetric SAR Images

机译:异构极化SAR图像的统计分类

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摘要

This paper presents a general approach for high- resolution polarimetric SAR data classification in heterogeneous clutter, based on a statistical test of equality of covariance matrices. The Spherically Invariant Random Vector (SIRV) model is used to describe the clutter. Several distance measures, including classical ones used in standard classification methods, can be derived from the general test. The new approach provide a threshold over which pixels are rejected from the image, meaning they are not sufficiently “close” from any existing class. A distance measure using this general approach is derived and tested on a high-resolution polarimetric data set acquired by the ONERA RAMSES system. It is compared to the results of the classical $H-alpha $ decomposition and Wishart classifier under Gaussian and SIRV assumption. Results show that the new approach rejects all pixels from heterogeneous parts of the scene and classifies its Gaussian parts.
机译:本文基于协方差矩阵相等性的统计检验,提出了一种在异构杂波中高分辨率极化SAR数据分类的通用方法。球不变随机向量(SIRV)模型用于描述杂波。可以从一般测试中得出几种距离度量,包括标准分类方法中使用的经典度量。新方法提供了一个阈值,在该阈值之上,图像中的像素被拒绝,这意味着它们与任何现有类别之间的距离都不足够“接近”。使用这种通用方法得出的距离测量值是在ONERA RAMSES系统获取的高分辨率偏振数据集上进行测试的。在高斯和SIRV假设下,将其与经典$ H-alpha $分解和Wishart分类器的结果进行比较。结果表明,该新方法拒绝了场景异质部分中的所有像素,并对其高斯部分进行了分类。

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