Title of article :
Reference-Driven Undersampled MR Image Reconstruction Using Wavelet Sparsity-Constrained Deep Image Prior
Author/Authors :
Zhao, Di Yulin Normal University - Yulin, China , Huang, Yanhu School of Physics and Telecommunication Engineering - Yulin Normal University - Yulin, China , Zhao, Feng Yulin Normal University - Yulin, China , Qin, Binyi Yulin Normal University - Yulin, China , Zheng, Jincun Yulin Normal University - Yulin, China
Abstract :
Deep learning has shown potential in significantly improving performance for undersampled magnetic resonance (MR) image
reconstruction. However, one challenge for the application of deep learning to clinical scenarios is the requirement of large,
high-quality patient-based datasets for network training. In this paper, we propose a novel deep learning-based method for
undersampled MR image reconstruction that does not require pre-training procedure and pre-training datasets. The proposed
reference-driven method using wavelet sparsity-constrained deep image prior (RWS-DIP) is based on the DIP framework and
thereby reduces the dependence on datasets. Moreover, RWS-DIP explores and introduces structure and sparsity priors into
network learning to improve the efficiency of learning. By employing a high-resolution reference image as the network input,
RWS-DIP incorporates structural information into network. RWS-DIP also uses the wavelet sparsity to further enrich the
implicit regularization of traditional DIP by formulating the training of network parameters as a constrained optimization
problem, which is solved using the alternating direction method of multipliers (ADMM) algorithm. Experiments on in vivo MR
scans have demonstrated that the RWS-DIP method can reconstruct MR images more accurately and preserve features and
textures from undersampled k-space measurements.
Keywords :
Deep , MR , RWS-DIP , MRI
Journal title :
Computational and Mathematical Methods in Medicine