基于比例的极化SAR图像相似度准则

H. Aghababaei, G. Ferraioli, V. Pascazio
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引用次数: 1

摘要

处理多视点偏振合成孔径雷达(PolSAR)图像需要对多个独立视点进行平均,以生成相似目标散射向量的样本协方差矩阵。在此基础上,目标散射矢量间最优相似度的估计仍然是一个有待解决的问题。在文献中,这一内在任务主要在基于信息的、基于几何的和基于检测的框架中得到解决。然而,导出的度量主要依赖于模型假设,如散射矢量的充分发展的散斑和圆形复高斯分布,这些在城市环境的高分辨率图像中可能不成立。为了解决这一可能的问题,提出了一种判别性的无模型度量,在非局部或基于patch的算法框架下计算目标散射的相似度。特别地,判别测度是利用两个预估计的散射矢量协方差矩阵之间的比值来构造的。利用ALOS-PALSAR图像对所提出的措施进行了实验验证,并与文献中已有的准则进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ratio-Based Similarity Criteria For Polarimetric SAR Image
Dealing with multi-look polarimetric synthetic aperture radar (PolSAR) images requires averaging several independent looks to generate a sample covariance matrix of similar target scattering vectors. Along this, estimation of optimal similarity between target scattering vectors is still an open issue. In the literature, this intrinsic task has been mainly addressed in the information-based, geometric-based and detection-based frameworks. However, the derived measures mainly rely on the model assumption such as fully developed speckle and circular complex Gaussian distribution of the scattering vectors, which may not be held in high-resolution images of urban environments. To cope with this possible issue a discriminative model-free measure is proposed, where the similarity of target scattering is computed in the framework of non-local or patch based algorithm. In particular, the discriminative measure is constructed using the ratio between two pre-estimated covariance matrices of the scattering vectors. Experimental validation of the proposed measure is provided using ALOS-PALSAR image and compared with existing criterions in the literature.
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