基于MAP估计的斑点图像分割模型

Yu Han, G. Baciu, Chen Xu
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引用次数: 1

摘要

在本文中,我们提出了一种新的基于模糊的变分模型,该模型可以有效地计算从合成孔径雷达(SAR)获得的斑点图像的分割。该模型是通过所谓的最大化后验(MAP)估计方法导出的。该模型的新颖之处在于:(1)使用Gamma分布而不是经典的高斯分布来模拟图像中每个均匀区域的灰度强度(Gamma分布函数更适合斑点图像);(2)针对模糊隶属函数设计自适应加权正则化项,防止分割结果退化(过度平滑)。与经典的全变分正则化器相比,本文提出的正则化项具有稀疏性。此外,提出了一种新的备选方向迭代算法来求解该模型。该算法结合了分裂Bregman法和Chambolle投影法,具有较高的效率。数值算例验证了该模型的有效性。
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A MAP estimation based segmentation model for speckled images
In this paper, we propose a new fuzzy-based variational model that efficiently computes partitioning of speckled images, such as images obtained from Synthetic Aperture Radar (SAR). The model is derived by using the so-called maximizing a posteriori (MAP) estimation method. The novelties of the model are: (1) the Gamma distribution rather than the classical Gaussian distribution is used to model the gray intensities in each homogeneous region of the images (Gamma distribution function is better suited for speckled images); (2) an adaptive weighted regularization term with respect to a fuzzy membership function is designed to protect the segmentation results from degeneration (being over-smoothed). Compared with the classical total variation (TV) regularizer, the proposed regularization term has a sparser property. In addition, a new alternative direction iteration algorithm is proposed to solve the model. The algorithm is efficient since it integrates the split Bregman method and the Chambolle's projection method. Numerical examples are given to verify the efficiency of our model.
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