Deep filter bank regression for super-resolution of anisotropic MR brain
images
- URL: http://arxiv.org/abs/2209.02611v1
- Date: Tue, 6 Sep 2022 16:05:19 GMT
- Title: Deep filter bank regression for super-resolution of anisotropic MR brain
images
- Authors: Samuel W. Remedios, Shuo Han, Yuan Xue, Aaron Carass, Trac D. Tran,
Dzung L. Pham, Jerry L. Prince
- Abstract summary: In 2D multi-slice magnetic resonance (MR) acquisition, the through-plane signals are typically of lower resolution than the in-plane signals.
Super-resolution (SR) methods aim to recover the underlying high-resolution volume, but the estimated high-frequency information is implicit via end-to-end data-driven training.
We propose a two-stage approach to approximate the completion of a perfect reconstruction filter bank corresponding to the anisotropic acquisition of a particular scan.
- Score: 18.41979609846356
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In 2D multi-slice magnetic resonance (MR) acquisition, the through-plane
signals are typically of lower resolution than the in-plane signals. While
contemporary super-resolution (SR) methods aim to recover the underlying
high-resolution volume, the estimated high-frequency information is implicit
via end-to-end data-driven training rather than being explicitly stated and
sought. To address this, we reframe the SR problem statement in terms of
perfect reconstruction filter banks, enabling us to identify and directly
estimate the missing information. In this work, we propose a two-stage approach
to approximate the completion of a perfect reconstruction filter bank
corresponding to the anisotropic acquisition of a particular scan. In stage 1,
we estimate the missing filters using gradient descent and in stage 2, we use
deep networks to learn the mapping from coarse coefficients to detail
coefficients. In addition, the proposed formulation does not rely on external
training data, circumventing the need for domain shift correction. Under our
approach, SR performance is improved particularly in "slice gap" scenarios,
likely due to the constrained solution space imposed by the framework.
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