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Methods for numerical integration of high-dimensional posterior densities with application to statistical image models

机译:高维后密度数值积分方法及其在统计图像模型中的应用

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摘要

Numerical computation with Bayesian posterior densities has recently received much attention both in the applied statistics and image processing communities. This paper surveys previous literature and presents efficient methods for computing marginal density values for image models that have been widely considered in computer vision and image processing. The particular models chosen are a Markov random field (MRF) formulation, implicit polynomial surface models, and parametric polynomial surface models. The computations can be used to make a variety of statistically based decisions, such as assessing region homogeneity for segmentation or performing model selection. Detailed descriptions of the methods are provided, along with demonstrative experiments on real imagery.
机译:最近,在应用统计和图像处理领域,具有贝叶斯后验密度的数值计算都受到了广泛关注。本文调查了以前的文献,并提出了计算图像模型的边际密度值的有效方法,这些方法已在计算机视觉和图像处理中得到广泛考虑。选择的特定模型是马尔可夫随机场(MRF)公式,隐式多项式曲面模型和参数多项式曲面模型。该计算可用于做出各种基于统计的决策,例如评估区域均一性以进行细分或执行模型选择。提供了有关方法的详细说明,以及有关真实图像的演示性实验。

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