MIST-net: Multi-domain Integrative Swin Transformer network for
Sparse-View CT Reconstruction
- URL: http://arxiv.org/abs/2111.14831v3
- Date: Thu, 2 Dec 2021 13:13:09 GMT
- Title: MIST-net: Multi-domain Integrative Swin Transformer network for
Sparse-View CT Reconstruction
- Authors: Jiayi Pan, Weiwen Wu, Zhifan Gao and Heye Zhang
- Abstract summary: The sparse-view data reconstruction is one of typical underdetermined inverse problems.
We propose a Multi-domain Integrative Swin Transformer network (MIST-net)
The experiments on the numerical datasets with 48 views demonstrated our proposed MIST-net provided higher reconstructed image quality.
- Score: 6.620837759518855
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The deep learning-based tomographic image reconstruction methods have been
attracting much attention among these years. The sparse-view data
reconstruction is one of typical underdetermined inverse problems, how to
reconstruct high-quality CT images from dozens of projections is still a
challenge in practice. To address this challenge, in this article we proposed a
Multi-domain Integrative Swin Transformer network (MIST-net). First, the
proposed MIST-net incorporated lavish domain features from data, residual-data,
image, and residual-image using flexible network architectures. Here, the
residual-data and residual-image domains network components can be considered
as the data consistency module to eliminate interpolation errors in both
residual data and image domains, and then further retain image details. Second,
to detect the image features and further protect image edge, the trainable
Sobel Filter was incorporated into the network to improve the encode-decode
ability. Third, with the classical Swin Transformer, we further designed the
high-quality reconstruction transformer (i.e., Recformer) to improve the
reconstruction performance. The Recformer inherited the power of Swin
transformer to capture the global and local features of the reconstructed
image. The experiments on the numerical datasets with 48 views demonstrated our
proposed MIST-net provided higher reconstructed image quality with small
feature recovery and edge protection than other competitors including the
advanced unrolled networks. The trained network was transferred to the real
cardiac CT dataset to further validate the advantages of our MIST-net as well
as good robustness in clinical applications.
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