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通过重新缩放的块迭代方法加速期望最大化最小化(EMML)算法及相关迭代算法。

Accelerating the EMML algorithm and related iterative algorithms by rescaled block-iterative methods.

作者信息

Byrne C L

机构信息

Dept. of Math. Sci., Massachusetts Univ., Lowell, MA 01854, USA.

出版信息

IEEE Trans Image Process. 1998;7(1):100-9. doi: 10.1109/83.650854.

Abstract

Analysis of convergence of the algebraic reconstruction technique (ART) shows it to be predisposed to converge to a solution faster than simultaneous methods, such as those of the Cimmino-Landweber type, the expectation maximization maximum likelihood method for the Poisson model (EMML), and the simultaneous multiplicative ART (SMART), which use all the data at each step. Although the choice of ordering of the data and of relaxation parameters are important, as Herman and Meyer have shown, they are not the full story. The analogous multiplicative ART (MART), which applies only to systems y=Px in which y>0, P= or >0 and a nonnegative solution is sought, is also sequential (or "row-action"), rather than simultaneous, but does not generally exhibit the same accelerated convergence relative to its simultaneous version, SMART. By dividing each equation by the maximum of the corresponding row of P, we find that this rescaled MART (RMART) does converge faster, when solutions exist, significantly so in cases in which the row maxima are substantially less than one. Such cases arise frequently in tomography and when the columns of P have been normalized to have sum one. Between simultaneous methods, which use all the data at each step, and sequential (or row-action) methods, which use only a single data value at each step, there are the block-iterative (or ordered subset) methods, in which a single block or subset of the data is processed at each step. The ordered subset EM (OSEM) of Hudson et al. is significantly faster than the EMML, but often fails to converge. The "rescaled block-iterative" EMML (RBI-EMML) is an accelerated block-iterative version of EMML that converges, in the consistent case, to a solution, for any choice of subsets; it reduces to OSEM when the restrictive "subset balanced" condition holds. Rescaled block-iterative versions of SMART and MART also exhibit accelerated convergence.

摘要

代数重建技术(ART)的收敛性分析表明,与同时使用所有数据的方法相比,如Cimmino-Landweber型方法、泊松模型的期望最大化最大似然法(EMML)以及同时乘法ART(SMART),ART更容易更快地收敛到一个解。尽管数据排序和松弛参数的选择很重要,正如赫尔曼和迈耶所表明的那样,但这并不是全部情况。类似的乘法ART(MART)仅适用于y = Px形式的系统,其中y>0,P = 或>0且寻求非负解,它也是逐次的(或“行作用”),而非同时的,但相对于其同时版本SMART,通常不会表现出相同的加速收敛。通过将每个方程除以P相应行的最大值,我们发现这种重新缩放的MART(RMART)在存在解的情况下确实收敛得更快,当行最大值远小于1时,收敛速度显著加快。这种情况在断层扫描中经常出现,并且当P的列已归一化使其和为1时也会出现。在每一步使用所有数据的同时方法和每一步仅使用单个数据值的逐次(或行作用)方法之间,存在块迭代(或有序子集)方法,其中每一步处理单个数据块或子集。哈德森等人的有序子集期望最大化(OSEM)方法比EMML快得多,但经常无法收敛。“重新缩放的块迭代”EMML(RBI-EMML)是EMML的加速块迭代版本,在一致的情况下,对于任何子集选择都能收敛到一个解;当满足限制性的“子集平衡”条件时,它简化为OSEM。SMART和MART的重新缩放块迭代版本也表现出加速收敛。

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