Bayesian Optimization of Sampling Densities in MRI

Alban Gossard, F. de Gournay, P. Weiss
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引用次数: 1

Abstract

Data-driven optimization of sampling patterns in MRI has recently received a significant attention. Following recent observations on the combinatorial number of minimizers in off-the-grid optimization, we propose a framework to globally optimize the sampling densities using Bayesian optimization. Using a dimension reduction technique, we optimize the sampling trajectories more than 20 times faster than conventional off-the-grid methods, with a restricted number of training samples. This method – among other benefits – discards the need of automatic differentiation. Its performance is slightly worse than state-of-the-art learned trajectories since it reduces the space of admissible trajectories, but comes with significant computational advantages. Other contributions include: i) a careful evaluation of the distance in probability space to generate trajectories ii) a specific training procedure on families of operators for unrolled reconstruction networks and iii) a gradient projection based scheme for trajectory optimization.
MRI中采样密度的贝叶斯优化
数据驱动的MRI采样模式优化最近受到了极大的关注。根据最近对离网优化中最小化器组合数量的观察,我们提出了一个使用贝叶斯优化来全局优化采样密度的框架。使用降维技术,我们优化采样轨迹的速度比传统的离网方法快20倍以上,并且训练样本数量有限。这种方法的好处之一是不需要自动区分。它的性能比最先进的学习轨迹略差,因为它减少了可接受轨迹的空间,但具有显著的计算优势。其他贡献包括:i)仔细评估概率空间中的距离以生成轨迹;ii)针对展开重建网络的算子族的特定训练程序;iii)基于梯度投影的轨迹优化方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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