Dynamic MRI using Learned Transform-based Deep Tensor Low-Rank Network
(DTLR-Net)
- URL: http://arxiv.org/abs/2206.00850v1
- Date: Thu, 2 Jun 2022 02:55:41 GMT
- Title: Dynamic MRI using Learned Transform-based Deep Tensor Low-Rank Network
(DTLR-Net)
- Authors: Yinghao Zhang, Peng Li, Yue Hu
- Abstract summary: We introduce a model-based deep learning network by learning the tensor low-rank prior to the cardiac dynamic MR images.
The proposed framework is able to provide improved recovery results compared with the state-of-the-art algorithms.
- Score: 9.658908705889777
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: While low-rank matrix prior has been exploited in dynamic MR image
reconstruction and has obtained satisfying performance, low-rank tensors models
have recently emerged as powerful alternative representations for
three-dimensional dynamic MR datasets. In this paper, we introduce a
model-based deep learning network by learning the tensor low-rank prior of the
cardiac dynamic MR images. Instead of representing the dynamic dataset as a
low-rank tensor directly, we propose a learned transformation operator to
exploit the tensor low-rank property in a transform domain. In particular, by
generalizing the t-SVD tensor decomposition into a unitary transformed t-SVD,
we define a transformed tensor nuclear norm (TTNN) to enforce the tensor
low-rankness. The dynamic MRI reconstruction problem is thus formulated using a
TTNN regularized optimization problem. An iterative algorithm based on ADMM
used to minimize the cost is unrolled into a deep network, where the transform
is learned using convolutional neural networks (CNNs) to promote the
reconstruction quality in the feature domain. Experimental results on cardiac
cine MRI reconstruction demonstrate that the proposed framework is able to
provide improved recovery results compared with the state-of-the-art
algorithms.
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