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A generalized Gaussian image model for edge-preserving MAP estimation

机译:边缘保持MAP估计的广义高斯图像模型

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The authors present a Markov random field model which allows realistic edge modeling while providing stable maximum a posterior (MAP) solutions. The model, referred to as a generalized Gaussian Markov random field (GGMRF), is named for its similarity to the generalized Gaussian distribution used in robust detection and estimation. The model satisfies several desirable analytical and computational properties for map estimation, including continuous dependence of the estimate on the data, invariance of the character of solutions to scaling of data, and a solution which lies at the unique global minimum of the a posteriori log-likelihood function. The GGMRF is demonstrated to be useful for image reconstruction in low-dosage transmission tomography.
机译:作者提出了一个马尔可夫随机场模型,该模型可以实现逼真的边缘建模,同时提供稳定的最大值后验(MAP)解决方案。该模型称为广义高斯马尔可夫随机场(GGMRF),因其与用于鲁棒检测和估计的广义高斯分布相似而得名。该模型满足地图估算的几种理想的分析和计算属性,包括估算对数据的连续依赖性,解对数据缩放的性质不变,以及解的后验对数的唯一全局最小值。似然函数。 GGMRF被证明可用于低剂量透射层析成像中的图像重建。

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