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A framework for nuclear image enhancement based on the Anscomb transform and the bayesian thresholding

机译:基于Anscomb变换和贝叶斯阈值的核图像增强框架

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Scintigraphic imagery is an important data source since it provides morphological and functional clinical informations. However, scintigraphic images present very bad quality because of several degradation factors. In fact, the recorded data are embedded in noise modelled as the realisation of Poisson process. The aim of this paper is to provide a framework able to enhance nuclear images quality by Poisson intensity estimation. This framework consists, in a first step, of performing variance-stabilizing step for the Poisson process thanks to the Anscombe transformation. So the obtained data can be considered as contaminated by a white Gaussian noise. In a second step, it uses a Bayesian technique inspired of Pizurica approach, known in the literature for exhibiting good results as for white Gaussian noise. In fact, the complex wavelet packets were exploited regarding to Pizurica algorithm.
机译:闪烁成像是重要的数据来源,因为它提供了形态和功能方面的临床信息。但是,由于几个退化因素,闪烁图像的质量非常差。实际上,记录的数据被嵌入到噪声中,该噪声被建模为泊松过程的实现。本文的目的是提供一个能够通过泊松强度估计来增强核图像质量的框架。该框架的第一步是借助Anscombe变换为Poisson过程执行方差稳定化步骤。因此,可以将获得的数据视为被高斯白噪声污染了。第二步,它采用了启发自Pizurica方法的贝叶斯技术,该技术在文献中因表现出与高斯白噪声相同的良好效果而闻名。实际上,关于Pizurica算法,已经利用了复杂的小波包。

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