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Penalized maximum-likelihood image reconstruction using space-alternating generalized EM algorithms

机译:使用空间交替广义EM算法的惩罚最大似然图像重建

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Most expectation-maximization (EM) type algorithms for penalized maximum-likelihood image reconstruction converge slowly, particularly when one incorporates additive background effects such as scatter, random coincidences, dark current, or cosmic radiation. In addition, regularizing smoothness penalties (or priors) introduce parameter coupling, rendering intractable the M-steps of most EM-type algorithms. This paper presents space-alternating generalized EM (SAGE) algorithms for image reconstruction, which update the parameters sequentially using a sequence of small "hidden" data spaces, rather than simultaneously using one large complete-data space. The sequential update decouples the M-step, so the maximization can typically be performed analytically. We introduce new hidden-data spaces that are less informative than the conventional complete-data space for Poisson data and that yield significant improvements in convergence rate. This acceleration is due to statistical considerations, not numerical overrelaxation methods, so monotonic increases in the objective function are guaranteed. We provide a general global convergence proof for SAGE methods with nonnegativity constraints.
机译:用于惩罚最大似然图像重建的大多数期望最大化(EM)类型算法收敛缓慢,尤其是当一个算法包含诸如散射,随机巧合,暗电流或宇宙辐射之类的附加背景效应时,尤其如此。此外,规范化平滑度惩罚(或先验)会引入参数耦合,从而使大多数EM类型算法的M步难以处理。本文提出了一种用于图像重建的空间替代通用EM(SAGE)算法,该算法使用一系列小的“隐藏”数据空间顺序更新参数,而不是同时使用一个较大的完整数据空间更新参数。顺序更新将M步解耦,因此通常可以通过分析执行最大化。我们引入了新的隐藏数据空间,这些数据空间比用于Poisson数据的常规完整数据空间要少,并且可以显着提高收敛速度。这种加速是出于统计考虑,而不是数值过松弛方法,因此可以保证目标函数的单调增加。我们为具有非负约束的SAGE方法提供了一个通用的全局收敛证明。

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