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Multiscale Statistical Image Models and Bayesian Methods

机译:多尺度统计图像模型和贝叶斯方法

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Multiscale statistical signal and image models resulted in major advances in many signal processing disciplines. This paper focuses on Bayesian image denoising. We discuss two important problems in specifying priors for image wavelet coefficients. The first problem is the characterization of the marginal subband statistics. Different existing models include highly kurtotic heavy-tailed distributions, Gaussian scale mixture models and weighted sums of two different distributions. We discuss the choice of a particular prior and give some new insights in this problem. The second problem that we address is statistical modelling of inter- and intrascale dependencies between image wavelet coefficients. Here we discuss the use of Hidden Markov Tree models, which are efficient in capturing inter-scale dependencies, as well as the use of Markov Random Field models, which are more efficient when it comes to spatial (intrascale) correlations. Apart from these relatively complex models, we review within a new unifying framework a class of low-complexity locally adaptive methods, which encounter the coefficient dependencies via local spatial activity indicators.
机译:多尺度统计信号和图像模型在许多信号处理领域取得了重大进展。本文着重于贝叶斯图像去噪。我们讨论在指定图像小波系数先验时的两个重要问题。第一个问题是边缘子带统计量的表征。现有的不同模型包括高度峰态重尾分布,高斯比例混合模型以及两个不同分布的加权和。我们讨论特定先验的选择,并提供有关此问题的一些新见解。我们要解决的第二个问题是图像小波系数之间的尺度间和尺度内依赖性的统计建模。在这里,我们讨论使用隐式马尔可夫树模型(可有效捕获尺度间相关性)以及使用马尔可夫随机场模型(当涉及空间(尺度内)相关性时更有效)。除了这些相对复杂的模型外,我们还在一个新的统一框架内回顾了一类低复杂度的局部自适应方法,这些方法通过局部空间活动指标遇到系数依赖性。

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