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An efficient total variation algorithm for super-resolution in fetal brain MRI with adaptive regularization

机译:自适应正则化的胎儿脑MRI超分辨率有效全变分算法

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Although fetal anatomy can be adequately viewed in new multi-slice MR images, many critical limitations remain for quantitative data analysis. To this end, several research groups have recently developed advanced image processing methods, often denoted by super-resolution (SR) techniques, to reconstruct from a set of clinical low resolution (LR) images, a high-resolution (HR) motion-free volume. It is usually modeled as an inverse problem where the regularization term plays a central role in the reconstruction quality. Literature has been quite attracted by Total Variation energies because of their ability in edge preserving but only standard explicit steepest gradient techniques have been applied for optimization. In a preliminary work, it has been shown that novel fast convex optimization techniques could be successfully applied to design an efficient Total Variation optimization algorithm for the super-resolution problem. In this work, two major contributions are presented. Firstly, we will briefly review the Bayesian and Variational dual formulations of current state-of-the-art methods dedicated to fetal MRI reconstruction. Secondly, we present an extensive quantitative evaluation of our SR algorithm previously introduced on both simulated fetal and real clinical data (with both normal and pathological subjects). Specifically, we study the robustness of regularization terms in front of residual registration errors and we also present a novel strategy for automatically select the weight of the regularization as regards the data fidelity term. Our results show that our TV implementation is highly robust in front of motion artifacts and that it offers the best trade-off between speed and accuracy for fetal MRI recovery as in comparison with state-of-the art methods. (C) 2015 Elsevier Inc. All rights reserved.
机译:尽管可以在新的多层MR图像中充分查看胎儿的解剖结构,但是对于定量数据分析仍然存在许多关键限制。为此,几个研究小组最近开发了先进的图像处理方法,通常用超分辨率(SR)技术表示,以从一组临床低分辨率(LR)图像中重建出高分辨率(HR)静止的图像卷。通常将其建模为反问题,其中正则化项在重建质量中起着核心作用。由于总变分能量具有边缘保留能力,因此文献已被“总变分”能量吸引,但只有标准的显式最陡梯度技术已用于优化。在初步工作中,已经表明,新颖的快速凸优化技术可以成功地用于设计用于超分辨率问题的有效的总方差优化算法。在这项工作中,提出了两个主要的贡献。首先,我们将简要回顾目前致力于胎儿MRI重建的最新技术的贝叶斯和变分对偶公式。其次,我们对先前在模拟胎儿和真实临床数据(包括正常和病理受试者)上引入的SR算法进行了广泛的定量评估。具体来说,我们研究了残差注册错误面前正则化项的鲁棒性,并且我们还提出了一种新颖的策略,可以自动选择关于数据保真度项的正则化权重。我们的结果表明,我们的电视实现在运动伪影之前具有很高的鲁棒性,并且与最新方法相比,它在速度和准确性之间获得了胎儿MRI恢复的最佳平衡。 (C)2015 Elsevier Inc.保留所有权利。

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