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Acceleration of image-based resolution modelling reconstruction using an expectation maximization nested algorithm

机译:使用期望最大化嵌套算法加速基于图像的分辨率建模重建

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Recent studies have demonstrated the benefits of a resolution model within iterative reconstruction algorithms in an attempt to account for effects that degrade the spatial resolution of the reconstructed images. However, these algorithms suffer from slower convergence rates, compared to algorithms where no resolution model is used, due to the additional need to solve an image deconvolution problem. In this paper, a recently proposed algorithm, which decouples the tomographic and image deconvolution problems within an image-based expectation maximization (EM) framework, was evaluated. This separation is convenient, because more computational effort can be placed on the image deconvolution problem and therefore accelerate convergence. Since the computational cost of solving the image deconvolution problem is relatively small, multiple image-based EM iterations do not significantly increase the overall reconstruction time. The proposed algorithm was evaluated using 2D simulations, as well as measured 3D data acquired on the high-resolution research tomograph. Results showed that bias reduction can be accelerated by interleaving multiple iterations of the image-based EM algorithm solving the resolution model problem, with a single EM iteration solving the tomographic problem. Significant improvements were observed particularly for voxels that were located on the boundaries between regions of high contrast within the object being imaged and for small regions of interest, where resolution recovery is usually more challenging. Minor differences were observed using the proposed nested algorithm, compared to the single iteration normally performed, when an optimal number of iterations are performed for each algorithm. However, using the proposed nested approach convergence is significantly accelerated enabling reconstruction using far fewer tomographic iterations (up to 70% fewer iterations for small regions). Nevertheless, the optimal number of nested image-based EM iterations is hard to be defined and it should be selected according to the given application.
机译:最近的研究表明,在迭代重建算法中使用分辨率模型的好处在于,尝试解决降低重建图像空间分辨率的影响。然而,与不使用分辨率模型的算法相比,由于需要解决图像去卷积问题,因此这些算法的收敛速度较慢。在本文中,对最近提出的算法进行了评估,该算法在基于图像的期望最大化(EM)框架内解耦了层析成像和图像反卷积问题。这种分离很方便,因为可以将更多的计算工作放在图像反卷积问题上,从而加快收敛速度​​。由于解决图像反卷积问题的计算成本相对较小,因此基于多个图像的EM迭代不会显着增加总体重建时间。使用2D模拟以及在高分辨率研究断层扫描仪上获得的实测3D数据对提出的算法进行了评估。结果表明,通过交织解决分辨率模型问题的基于图像的EM算法的多次迭代,并通过解决断层成像问题的单个EM迭代,可以加快偏差减少。特别是对于位于成像对象内高对比度区域之间的边界上的体素以及感兴趣的小区域(其中分辨率恢复通常更具挑战性),观察到了显着改进。当为每个算法执行最佳迭代次数时,与通常执行的单个迭代相比,使用建议的嵌套算法观察到微小差异。但是,使用建议的嵌套方法,可以显着加速收敛,从而可以使用更少的断层摄影迭代(对于小区域,最多可以将迭代减少多达70%)进行重建。然而,难以定义基于嵌套图像的EM迭代的最佳数量,应根据给定的应用选择最佳数量。

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