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Model-based despeckling and information extraction from SAR images

机译:基于模型的SAR图像去斑和信息提取

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摘要

Basic textures as they appear, especially in high resolution SAR images, are affected by multiplicative speckle noise and should be preserved by despeckling algorithms. Sharp edges between different regions and strong scatterers also must be preserved. To despeckle images, the authors use a maximum aposteriori (MAP) estimation of the cross section, choosing between different prior models. The proposed approach uses a Gauss Markov random field (GMRF) model for textured areas and allows an adaptive neighborhood system for edge preservation between uniform areas. In order to obtain the best possible texture reconstruction, an expectation maximization algorithm is used to estimate the texture parameters that provide the highest evidence. Borders between homogeneous areas are detected with a stochastic region-growing algorithm, locally determining the neighborhood system of the Gauss Markov prior. Smoothed strong scatterers are found in the ratio image of the data and the filtering result and are replaced in the image. In this way, texture, edges between homogeneous regions, and strong scatterers are well reconstructed and preserved. Additionally, the estimated model parameters can be used for further image interpretation methods.
机译:出现的基本纹理(尤其是在高分辨率SAR图像中)受乘法斑点噪声的影响,应通过去斑点算法保留这些纹理。还必须保留不同区域和强散射体之间的锐利边缘。为了使图像去斑点,作者使用横截面的最大撇号(MAP)估计,在不同的现有模型之间进行选择。所提出的方法对纹理区域使用高斯马尔可夫随机场(GMRF)模型,并允许自适应邻域系统在均匀区域之间进行边缘保留。为了获得最佳的可能纹理重构,使用期望最大化算法来估计提供最高证据的纹理参数。使用随机区域增长算法检测同质区域之间的边界,从而局部确定高斯马尔可夫先验的邻域系统。在数据的比例图像和滤波结果中找到了平滑的强散射体,并在图像中对其进行了替换。这样,质地,均匀区域之间的边缘以及强散射体都可以很好地重建和保留。另外,估计的模型参数可用于进一步的图像解释方法。

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