In this paper, we present a novel statistical model, $\textit{the generalized-Gaussian-Rician}$ (GG-Rician) distribution, for the characterization of synthetic aperture radar (SAR) images. Since accurate statistical models lead to better results in applications such as target tracking, classification, or despeckling, characterizing SAR images of various scenes including urban, sea surface, or agricultural, is essential. The proposed statistical model is based on the Rician distribution to model the amplitude of a complex SAR signal, the in-phase and quadrature components of which are assumed to be generalized-Gaussian distributed. The proposed amplitude GG-Rician model is further extended to cover the intensity SAR signals. In the experimental analysis, the GG-Rician model is investigated for amplitude and intensity SAR images of various frequency bands and scenes in comparison to state-of-the-art statistical models that include $\mathcal{K}$, Weibull, Gamma, and Lognormal. In order to decide on the most suitable model, statistical significance analysis via Kullback-Leibler divergence and Kolmogorov-Smirnov statistics are performed. The results demonstrate the superior performance and flexibility of the proposed model for all frequency bands and scenes and its applicability on both amplitude and intensity SAR images. The Matlab package is available at https://github.com/oktaykarakus/GG-Rician-SAR-Image-Modelling.


翻译:在本文中,我们展示了一个新的统计模型(GG-Rician),用于合成孔径雷达(SAR)图像的定性。由于准确的统计模型导致目标跟踪、分类或淡化等应用的更好结果,将城市、海面或农业等各种场景的SAR图像定性为城市、海面或农业等各种场景的SAR图像。拟议的统计模型以Rician的分布为基础,以模拟合成孔径雷达信号的振幅为模型,其阶段和方形组成部分假定为通用-Gaussian分布。拟议的振幅G-Rician模型进一步扩大,以涵盖合成孔径雷达信号的强度。在实验分析中,GG-Rician模型对各种频率波段和场景的振幅和强度图像进行了调查,这些模型包括$\mathcal{K}、Wibulball、Gammart和Logardalmanic。为了决定最合适的模型,通过Kullback-Slobal-Slob-Syal-real Syal-ligal-ligal-Supal-Syal-Syal-Aligal-Sup-Slation 和Syal-Syal-Sy-Syal-Sup-Sup-Sup-Slational-Sy-Sup-Slup-Slup-Slations-Slations-s-s-s-Slations-s-Supal-s-s-s-s-s-s-Slations-s-s-s-s-Slations-Sl和Sl和Slog-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-slviollvalvalvalvaldal-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-s-Sl和Sl和Sl和Sl和Sl和Sl-Sl和Sl和

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