Zhao Bo, Haldar Justin P, Liang Zhi-Pei
Department of Electrical and Computer Engineering and Beckman Institute for Advanced Science and Technology, University of Illinois at Urbana-Champaign, 1406 West Green Street, IL 61801, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:3390-3. doi: 10.1109/IEMBS.2010.5627934.
The partially separable function (PSF) model has been successfully used to reconstruct cardiac MR images with high spatiotemporal resolution from sparsely sampled (k,t)-space data. However, the underlying model fitting problem is often ill-conditioned due to temporal undersampling, and image artifacts can result if reconstruction is based solely on the data consistency constraints. This paper proposes a new method to regularize the inverse problem using sparsity constraints. The method enables both partial separability (or low-rankness) and sparsity constraints to be used simultaneously for high-quality image reconstruction from undersampled (k,t)-space data. The proposed method is described and reconstruction results with cardiac imaging data are presented to illustrate its performance.
部分可分离函数(PSF)模型已成功用于从稀疏采样的(k,t)空间数据重建具有高时空分辨率的心脏磁共振图像。然而,由于时间欠采样,潜在的模型拟合问题往往病态,并且如果仅基于数据一致性约束进行重建,可能会产生图像伪影。本文提出了一种使用稀疏性约束来正则化逆问题的新方法。该方法能够同时使用部分可分离性(或低秩性)和稀疏性约束,从欠采样的(k,t)空间数据进行高质量图像重建。描述了所提出的方法,并给出了心脏成像数据的重建结果以说明其性能。