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Hybrid Poisson/polynomial objective functions for tomographic image reconstruction from transmission scans

机译:混合泊松/多项式目标函数用于通过透射扫描重建断层图像

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This paper describes rapidly converging algorithms for computing attenuation maps from Poisson transmission measurements using penalized-likelihood objective functions. We demonstrate that an under-relaxed cyclic coordinate-ascent algorithm converges faster than the convex algorithm of Lange (see ibid., vol.4, no.10, p.1430-1438, 1995), which in turn converges faster than the expectation-maximization (EM) algorithm for transmission tomography. To further reduce computation, one could replace the log-likelihood objective with a quadratic approximation. However, we show with simulations and analysis that the quadratic objective function leads to biased estimates for low-count measurements. Therefore we introduce hybrid Poisson/polynomial objective functions that use the exact Poisson log-likelihood for detector measurements with low counts, but use computationally efficient quadratic or cubic approximations for the high-count detector measurements. We demonstrate that the hybrid objective functions reduce computation time without increasing estimation bias.
机译:本文介绍了一种快速收敛算法,该算法使用惩罚似然目标函数从泊松传输测量中计算衰减图。我们证明,松弛度较低的循环坐标上升算法的收敛速度快于Lange的凸算法(参见同上,第4卷,第10期,第1430-1438页,1995年),其收敛速度快于预期。传输层析成像的最大最大化(EM)算法。为了进一步减少计算,可以用二次逼近代替对数似然目标。但是,我们通过仿真和分析表明,二次目标函数会导致低计数测量的偏差估计。因此,我们引入了混合泊松/多项式目标函数,该函数使用精确的泊松对数似然来进行低计数的检测器测量,而对高计数值的检测器使用计算有效的二次或三次近似。我们证明了混合目标函数在不增加估计偏差的情况下减少了计算时间。

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