Paper ID: 2502.11749 • Published Feb 17, 2025
JotlasNet: Joint Tensor Low-Rank and Attention-based Sparse Unrolling Network for Accelerating Dynamic MRI
Yinghao Zhang, Haiyan Gui, Ningdi Yang, Yue Hu
TL;DR
Get AI-generated summaries with premium
Get AI-generated summaries with premium
Joint low-rank and sparse unrolling networks have shown superior performance
in dynamic MRI reconstruction. However, existing works mainly utilized matrix
low-rank priors, neglecting the tensor characteristics of dynamic MRI images,
and only a global threshold is applied for the sparse constraint to the
multi-channel data, limiting the flexibility of the network. Additionally, most
of them have inherently complex network structure, with intricate interactions
among variables. In this paper, we propose a novel deep unrolling network,
JotlasNet, for dynamic MRI reconstruction by jointly utilizing tensor low-rank
and attention-based sparse priors. Specifically, we utilize tensor low-rank
prior to exploit the structural correlations in high-dimensional data.
Convolutional neural networks are used to adaptively learn the low-rank and
sparse transform domains. A novel attention-based soft thresholding operator is
proposed to assign a unique learnable threshold to each channel of the data in
the CNN-learned sparse domain. The network is unrolled from the elaborately
designed composite splitting algorithm and thus features a simple yet efficient
parallel structure. Extensive experiments on two datasets (OCMR, CMRxRecon)
demonstrate the superior performance of JotlasNet in dynamic MRI
reconstruction.