Physics-driven deep training of dictionary-based algorithms for MR image reconstruction

S. Ravishankar, Il Yong Chun, J. Fessler
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引用次数: 12

Abstract

Techniques involving learned dictionaries can outperform conventional approaches involving (nontrained) analytical sparsifying models for MR image reconstruction. Inspired by iterative dictionary learning-based reconstruction methods, we propose a novel efficient image reconstruction framework involving multiple iterations (or layers). Each layer involves applying a transformation to image patches, thresholding, and then reconstructing the patches in a dictionary, followed by an update of the image using observed k-space measurements. We train the transforms, thresholds, and dictionaries within the multi-layer algorithm to minimize reconstruction errors. Our experiments demonstrate that for highly undersampled k-space data, such trained reconstruction algorithms provide high quality results.
基于字典的磁共振图像重建算法的物理驱动深度训练
涉及学习字典的技术可以优于涉及(未经训练的)分析稀疏化模型的传统MR图像重建方法。受基于迭代字典学习的图像重建方法的启发,我们提出了一种涉及多迭代(或多层)的高效图像重建框架。每一层都涉及到对图像补丁进行转换,阈值化,然后在字典中重建补丁,然后使用观察到的k空间测量对图像进行更新。我们在多层算法中训练变换、阈值和字典以最小化重构误差。我们的实验表明,对于高度欠采样的k空间数据,这种训练有素的重建算法提供了高质量的结果。
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