A low-rank representation for unsupervised registration of medical
images
- URL: http://arxiv.org/abs/2105.09548v1
- Date: Thu, 20 May 2021 07:04:10 GMT
- Title: A low-rank representation for unsupervised registration of medical
images
- Authors: Dengqiang Jia, Shangqi Gao, Qunlong Chen, Xinzhe Luo, Xiahai Zhuang
- Abstract summary: We propose a novel approach based on a low-rank representation, i.e., Regnet-LRR, to tackle the problem of noisy data registration scenarios.
We show that the low-rank representation can boost the ability and robustness of models as well as bring significant improvements in noisy data registration scenarios.
- Score: 10.499611180329804
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Registration networks have shown great application potentials in medical
image analysis. However, supervised training methods have a great demand for
large and high-quality labeled datasets, which is time-consuming and sometimes
impractical due to data sharing issues. Unsupervised image registration
algorithms commonly employ intensity-based similarity measures as loss
functions without any manual annotations. These methods estimate the
parameterized transformations between pairs of moving and fixed images through
the optimization of the network parameters during training. However, these
methods become less effective when the image quality varies, e.g., some images
are corrupted by substantial noise or artifacts. In this work, we propose a
novel approach based on a low-rank representation, i.e., Regnet-LRR, to tackle
the problem. We project noisy images into a noise-free low-rank space, and then
compute the similarity between the images. Based on the low-rank similarity
measure, we train the registration network to predict the dense deformation
fields of noisy image pairs. We highlight that the low-rank projection is
reformulated in a way that the registration network can successfully update
gradients. With two tasks, i.e., cardiac and abdominal intra-modality
registration, we demonstrate that the low-rank representation can boost the
generalization ability and robustness of models as well as bring significant
improvements in noisy data registration scenarios.
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