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首页> 外文期刊>Frontiers of Information Technology & Electronic Engineering >Multi-scale UDCT dictionary learning based highly undersampled MR image reconstruction using patch-based constraint splitting augmented Lagrangian shrinkage algorithm
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Multi-scale UDCT dictionary learning based highly undersampled MR image reconstruction using patch-based constraint splitting augmented Lagrangian shrinkage algorithm

机译:使用基于补丁的约束分割增强拉格朗日收缩算法,基于多尺度UDCT字典学习的高度欠采样MR图像重建

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Recently, dictionary learning (DL) based methods have been introduced to compressed sensing magnetic resonance imaging (CS-MRI), which outperforms pre-defined analytic sparse priors. However, single-scale trained dictionary directly from image patches is incapable of representing image features from multi-scale, multi-directional perspective, which influences the reconstruction performance. In this paper, incorporating the superior multi-scale properties of uniform discrete curvelet transform (UDCT) with the data matching adaptability of trained dictionaries, we propose a flexible sparsity framework to allow sparser representation and prominent hierarchical essential features capture for magnetic resonance (MR) images. Multi-scale decomposition is implemented by using UDCT due to its prominent properties of lower redundancy ratio, hierarchical data structure, and ease of implementation. Each sub-dictionary of different sub-bands is trained independently to form the multi-scale dictionaries. Corresponding to this brand-new sparsity model, we modify the constraint splitting augmented Lagrangian shrinkage algorithm (C-SALSA) as patch-based C-SALSA (PB C-SALSA) to solve the constraint optimization problem of regularized image reconstruction. Experimental results demonstrate that the trained sub-dictionaries at different scales, enforcing sparsity at multiple scales, can then be efficiently used for MRI reconstruction to obtain satisfactory results with further reduced undersampling rate. Multi-scale UDCT dictionaries potentially outperform both single-scale trained dictionaries and multi-scale analytic transforms. Our proposed sparsity model achieves sparser representation for reconstructed data, which results in fast convergence of reconstruction exploiting PB C-SALSA. Simulation results demonstrate that the proposed method outperforms conventional CS-MRI methods in maintaining intrinsic properties, eliminating aliasing, reducing unexpected artifacts, and removing noise. It can achieve comparable performance of reconstruction with the state-of-the-art methods even under substantially high undersampling factors.
机译:最近,基于字典学习(DL)的方法已被引入到优于预定义的解析稀疏先验的压缩感测磁共振成像(CS-MRI)中。然而,直接来自图像补丁的单尺度训练字典不能从多尺度,多方向的角度来表示图像特征,这影响了重建性能。在本文中,结合均匀离散曲波变换(UDCT)的卓越多尺度特性与受过训练的词典的数据匹配适应性,我们提出了一种灵活的稀疏性框架,以允许稀疏表示和磁共振(MR)捕获的重要分层基本特征图片。由于使用UDCT可以实现多尺度分解,因为它具有较低的冗余率,分层数据结构以及易于实现的突出特性。对不同子带的每个子字典进行独立训练,以形成多尺度字典。对应于这种全新的稀疏模型,我们将约束拆分增强拉格朗日收缩算法(C-SALSA)修改为基于补丁的C-SALSA(PB C-SALSA),以解决正则化图像重建的约束优化问题。实验结果表明,经过训练的不同级别的子词典可以在多个级别上增强稀疏性,然后可以有效地用于MRI重建,从而获得令人满意的结果,而进一步降低了欠采样率。多尺度UDCT字典可能会胜过单尺度训练的字典和多尺度分析转换。我们提出的稀疏模型实现了重建数据的稀疏表示,这导致利用PB C-SALSA进行重建的快速收敛。仿真结果表明,该方法在保持固有特性,消除混叠,减少意外伪像和消除噪声方面优于传统的CS-MRI方法。即使在相当高的欠采样因子下,它也可以使用最新技术实现相当的重建性能。

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