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Globally convergent algorithms for maximum a posteriori transmission tomography

机译:全局收敛算法,可最大程度地实现后验透射层析成像

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This paper reviews and compares three maximum likelihood algorithms for transmission tomography. One of these algorithms is the EM algorithm, one is based on a convexity argument devised by De Pierro (see IEEE Trans. Med. Imaging, vol.12, p.328-333, 1993) in the context of emission tomography, and one is an ad hoc gradient algorithm. The algorithms enjoy desirable local and global convergence properties and combine gracefully with Bayesian smoothing priors. Preliminary numerical testing of the algorithms on simulated data suggest that the convex algorithm and the ad hoc gradient algorithm are computationally superior to the EM algorithm. This superiority stems from the larger number of exponentiations required by the EM algorithm. The convex and gradient algorithms are well adapted to parallel computing.
机译:本文回顾并比较了三种用于透射层析成像的最大似然算法。这些算法之一是EM算法,一种算法是基于De Pierro(在发射断层扫描技术中)设计的凸论点(请参阅IEEE Trans。Med。Imaging,第12卷,第328-333页,1993),是一种临时梯度算法。该算法享有理想的局部和全局收敛性,并与贝叶斯平滑先验很好地结合。对算法在模拟数据上的初步数值测试表明,凸算法和自组织梯度算法在计算上优于EM算法。这种优势源于EM算法所需的大量幂运算。凸算法和梯度算法非常适合并行计算。

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