A model-guided deep network for limited-angle computed tomography
- URL: http://arxiv.org/abs/2008.03988v1
- Date: Mon, 10 Aug 2020 09:42:32 GMT
- Title: A model-guided deep network for limited-angle computed tomography
- Authors: Wei Wang, Xiang-Gen Xia, Chuanjiang He, Zemin Ren, Jian Lu, Tianfu
Wang and Baiying Lei
- Abstract summary: We first propose a variational model for the limited-angle computed tomography (CT) image reconstruction and then convert the model into an end-to-end deep network.
Our network tackles both the sinograms and the CT images, and can simultaneously suppress the artifacts caused by the incomplete data.
- Score: 28.175533839713847
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we first propose a variational model for the limited-angle
computed tomography (CT) image reconstruction and then convert the model into
an end-to-end deep network.We use the penalty method to solve the model and
divide it into three iterative subproblems, where the first subproblem
completes the sinograms by utilizing the prior information of sinograms in the
frequency domain and the second refines the CT images by using the prior
information of CT images in the spatial domain, and the last merges the outputs
of the first two subproblems. In each iteration, we use the convolutional
neural networks (CNNs) to approxiamte the solutions of the first two
subproblems and, thus, obtain an end-to-end deep network for the limited-angle
CT image reconstruction. Our network tackles both the sinograms and the CT
images, and can simultaneously suppress the artifacts caused by the incomplete
data and recover fine structural information in the CT images. Experimental
results show that our method outperforms the existing algorithms for the
limited-angle CT image reconstruction.
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