Multi-scale MRI reconstruction via dilated ensemble networks
- URL: http://arxiv.org/abs/2310.04705v2
- Date: Thu, 30 Nov 2023 07:00:06 GMT
- Title: Multi-scale MRI reconstruction via dilated ensemble networks
- Authors: Wendi Ma, Marlon Bran Lorenzana, Wei Dai, Hongfu Sun, Shekhar S.
Chandra
- Abstract summary: We introduce an efficient multi-scale reconstruction network using dilated convolutions to preserve resolution.
Inspired by parallel dilated filters, multiple receptive fields are processed simultaneously with branches that see both large structural artefacts and fine local features.
- Score: 2.8755060609190086
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As aliasing artefacts are highly structural and non-local, many MRI
reconstruction networks use pooling to enlarge filter coverage and incorporate
global context. However, this inadvertently impedes fine detail recovery as
downsampling creates a resolution bottleneck. Moreover, real and imaginary
features are commonly split into separate channels, discarding phase
information particularly important to high frequency textures. In this work, we
introduce an efficient multi-scale reconstruction network using dilated
convolutions to preserve resolution and experiment with a complex-valued
version using complex convolutions. Inspired by parallel dilated filters,
multiple receptive fields are processed simultaneously with branches that see
both large structural artefacts and fine local features. We also adopt dense
residual connections for feature aggregation to efficiently increase scale and
the deep cascade global architecture to reduce overfitting. The real-valued
version of this model outperformed common reconstruction architectures as well
as a state-of-the-art multi-scale network whilst being three times more
efficient. The complex-valued network yielded better qualitative results when
more phase information was present.
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