K-Space Transformer for Fast MRIReconstruction with Implicit
Representation
- URL: http://arxiv.org/abs/2206.06947v1
- Date: Tue, 14 Jun 2022 16:06:15 GMT
- Title: K-Space Transformer for Fast MRIReconstruction with Implicit
Representation
- Authors: Ziheng Zhao, Tianjiao Zhang, Weidi Xie, Yanfeng Wang, Ya Zhang
- Abstract summary: We propose a Transformer-based framework for processing sparsely sampled MRI signals in k-space.
We adopt an implicit representation of spectrogram, treating spatial coordinates as inputs, and dynamically query the partially observed measurements.
To strive a balance between computational cost and reconstruction quality, we build a hierarchical structure with low-resolution and high-resolution decoders respectively.
- Score: 39.04792898427536
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper considers the problem of fast MRI reconstruction. We propose a
novel Transformer-based framework for directly processing the sparsely sampled
signals in k-space, going beyond the limitation of regular grids as ConvNets
do. We adopt an implicit representation of spectrogram, treating spatial
coordinates as inputs, and dynamically query the partially observed
measurements to complete the spectrogram, i.e. learning the inductive bias in
k-space. To strive a balance between computational cost and reconstruction
quality, we build an hierarchical structure with low-resolution and
high-resolution decoders respectively. To validate the necessity of our
proposed modules, we have conducted extensive experiments on two public
datasets, and demonstrate superior or comparable performance over
state-of-the-art approaches.
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