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SAR Image Segmentation Based on Level Set Approach and {cal G}_A^0 Model

机译:基于水平集方法和{cal G} _A ^ 0模型的SAR图像分割

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摘要

This paper proposes an image segmentation method for synthetic aperture radar (SAR), exploring statistical properties of SAR data to characterize image regions. We consider {cal G}_A^0 distribution parameters for SAR image segmentation, combined to the level set framework. The {cal G}_A^0 distribution belongs to a class of {cal G} distributions that have been successfully used to model different regions in amplitude SAR images for data modeling purpose. Such statistical data model is fundamental to deriving the energy functional to perform region mapping, which is input into our level set propagation numerical scheme that splits SAR images into homogeneous, heterogeneous, and extremely heterogeneous regions. Moreover, we introduce an assessment procedure based on stochastic distance and the {cal G}_A^0 model to quantify the robustness and accuracy of our approach. Our results demonstrate the accuracy of the algorithms regarding experiments on synthetic and real SAR data.
机译:本文提出了一种合成孔径雷达(SAR)的图像分割方法,探讨了SAR数据的统计特性来表征图像区域。我们考虑将用于SAR图像分割的{cal G} _A ^ 0分布参数组合到级别集框架中。 {cal G} _A ^ 0分布属于{cal G}分布的一类,已成功用于对振幅SAR图像中的不同区域进行建模以进行数据建模。这样的统计数据模型是导出执行区域映射的能量函数的基础,该能量函数被输入到我们的水平集传播数值方案中,该方案将SAR图像分为均匀,异质和极异质区域。此外,我们引入了基于随机距离和{cal G} _A ^ 0模型的评估程序,以量化我们方法的鲁棒性和准确性。我们的结果证明了合成和真实SAR数据实验算法的准确性。

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