Deformation-Compensated Learning for Image Reconstruction Without Ground Truth
2022
Deep neural networks for medical image reconstruction are traditionally trained using high-quality ground-truth images as training targets. Recent work on
Noise2Noise (N2N)
has shown the potential of using multiple noisy measurements of the same object as an alternative to having a ground-truth. However, existing N2N-based methods are not suitable for learning from the measurements of an object undergoing nonrigid deformation. This paper addresses this issue by proposing the
deformation-compensated learning (DeCoLearn)
method for training deep reconstruction networks by compensating for object deformations. A key component of DeCoLearn is a deep registration module, which is jointly trained with the deep reconstruction network without any ground-truth supervision. We validate DeCoLearn on both simulated and experimentally collected
magnetic resonance imaging (MRI)
data and show that it significantly improves imaging quality.
- Correction
- Source
- Cite
- Save
- Machine Reading By IdeaReader
81
References
0
Citations
NaN
KQI