离散多尺度贝叶斯图像重建

T. Frese, C. Bouman, K. Sauer
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引用次数: 7

摘要

统计和离散值方法通过结合成像系统和被成像对象的先验信息,可以大大提高重建质量。在层析成像中表现良好的统计方法是贝叶斯MAP估计。然而,在层析成像域中计算MAP估计是一个涉及计算的优化问题。此外,离散值MAP重建需要准确了解截面上的密度或发射水平。本文提出了一种有效的多尺度离散值MAP重建算法,包括离散水平估计。实验结果表明,该算法比固定尺度重构具有更好的收敛性,对局部最小值具有更强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete multiscale Bayesian image reconstruction
Statistical and discrete-valued methods can substantially improve the reconstruction quality by incorporating prior information about both the imaging system and the object being imaged. A statistical method shown to perform well in the tomographic setting is Bayesian MAP estimation. However, computing the MAP estimate in the tomographic domain is a computationally involved optimization problem. Furthermore, discrete-valued MAP reconstruction requires accurate knowledge of the density or emission levels in the cross-section. In this paper we present an efficient multiscale algorithm for discrete-valued MAP reconstruction including estimation of the discrete levels. Experimental results indicate that the multiscale algorithm has improved convergence behaviour over fixed scale reconstruction and is more robust with respect to local minima.
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