首页> 外文会议>International Joint Conference on Computer Vision and Computer Graphics Theory and Applications >VARIATIONAL BAYES WITH GAUSS-MARKOV-POTTS PRIOR MODELS FOR JOINT IMAGE RESTORATION AND SEGMENTATION
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VARIATIONAL BAYES WITH GAUSS-MARKOV-POTTS PRIOR MODELS FOR JOINT IMAGE RESTORATION AND SEGMENTATION

机译:具有Gauss-Markov-Potts的变形贝叶,用于联合图像恢复和分割的现有模型

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In this paper, we propose a family of non-homogeneous Gauss-Markov fields with Potts region labels model for images to be used in a Bayesian estimation framework, in order to jointly restore and segment images degraded by a known point spread function and additive noise. The joint posterior law of all the unknowns (the unknown image, its segmentation hidden variable and all the hyperparameters) is approximated by a separable probability laws via the variational Bayes technique. This approximation gives the possibility to obtain practically implemented joint restoration and segmentation algorithm. We will present some preliminary results and comparison with a MCMC Gibbs sampling based algorithm.
机译:在本文中,我们提出了一种非同质高斯 - 马尔可夫领域与Potts区标签模型用于贝叶斯估计框架中使用的图像,以共同恢复和段图像通过已知的点扩展功能和添加剂噪声来降级。所有未知数(未知图像,其分割隐藏变量和所有HyperParameters)的联合后律由可分辨率贝叶斯技术近似于可分离的概率法。该近似能够获得实际实现的联合恢复和分割算法的可能性。我们将提出一些初步结果并与基于MCMC GIBBS采样的算法进行比较。

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