PET-MRI Joint Reconstruction by Joint Sparsity Based Tight Frame Regularization
For researchers in medical imaging, this work offers an improved method for simultaneous PET-MRI reconstruction, though the gains appear incremental over prior joint reconstruction approaches.
The paper proposes a tight frame based joint reconstruction model for PET-MRI that leverages joint sparsity and a non-convex balanced approach to handle different image regularities, achieving better performance than existing models in numerical experiments.
Recent technical advances lead to the coupling of PET and MRI scanners, enabling to acquire functional and anatomical data simultaneously. In this paper, we propose a tight frame based PET-MRI joint reconstruction model via the joint sparsity of tight frame coefficients. In addition, a non-convex balanced approach is adopted to take the different regularities of PET and MRI images into account. To solve the nonconvex and nonsmooth model, a proximal alternating minimization algorithm is proposed, and the global convergence is present based on Kurdyka-Lojasiewicz property. Finally, the numerical experiments show that the our proposed models achieve better performance over the existing PET-MRI joint reconstruction models.