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Reversible jump Markov chain Monte Carlo for Bayesian deconvolution of point sources

机译:可逆跳跃马尔可夫链蒙特卡洛为点来源的贝叶斯解构

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In this article, we address the problem of Bayesian deconvolution of point sources in nuclear imaging under the assumption of Poissonian statistics. The observed image is the result of the convolution by a known point spread function of an unknown number of point sources with unknown parameters. To detect the number of sources and estimate their parameters we follow a Bayesian approach. However, instead of using a classical low level prior model based on Markov random fields, we prose a high-level model which describes the picture as a list of its constituent objects, rather than as a list of pixels on which the data are recorded. More precisely, each source is assumed to have a circular Gaussian shape and we set a prior distribution on the number of sources, on their locations and on the amplitude and width deviation of the Gaussian shape. This high-level model has far less parameters than a Markov random field model as only s small number of sources are usually present. The Bayesian model being defined, all inference is based on the resulting posterior distribution. This distribution does not admit any closed-form analytical expression. We present here a Reversible Jump MCMC algorithm for its estimation. This algorithm is tested on both synthetic and real data.
机译:在本文中,我们在泊松统计数据下解决了核影像核查点的贝叶斯解卷积问题。观察到的图像是通过未知参数的未知点源的已知点扩展功能的卷积的结果。要检测来源的数量并估计他们的参数,我们遵循贝叶斯方法。然而,不使用基于Markov随机字段的经典低级先前模型,而不是将图像描述为其组成对象的列表的高级模型,而不是作为记录数据的像素列表。更确切地说,假设每个源具有圆形高斯形状,并且我们在其位置和高斯形状的幅度和幅度和宽度偏差上设置了对源的数量的先前分配。由于通常存在少量源,因此该高级模型比Markov随机字段模型更少。所定义的贝叶斯模型,所有推断都基于所产生的后部分布。该分布不承认任何闭合形式的分析表达。我们在这里介绍一种可逆跳转MCMC算法,其估计。在合成和实际数据上测试该算法。

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