Multi-scale Neural ODEs for 3D Medical Image Registration
- URL: http://arxiv.org/abs/2106.08493v2
- Date: Thu, 17 Jun 2021 21:05:42 GMT
- Title: Multi-scale Neural ODEs for 3D Medical Image Registration
- Authors: Junshen Xu, Eric Z. Chen, Xiao Chen, Terrence Chen, Shanhui Sun
- Abstract summary: Image registration plays an important role in medical image analysis.
Deep learning methods such as learn-to-map are much faster but either iterative or coarse-to-fine approach is required to improve accuracy for handling large motions.
In this work, we proposed to learn a registration via a multi-scale neural ODE model.
- Score: 7.715565365558909
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Image registration plays an important role in medical image analysis.
Conventional optimization based methods provide an accurate estimation due to
the iterative process at the cost of expensive computation. Deep learning
methods such as learn-to-map are much faster but either iterative or
coarse-to-fine approach is required to improve accuracy for handling large
motions. In this work, we proposed to learn a registration optimizer via a
multi-scale neural ODE model. The inference consists of iterative gradient
updates similar to a conventional gradient descent optimizer but in a much
faster way, because the neural ODE learns from the training data to adapt the
gradient efficiently at each iteration. Furthermore, we proposed to learn a
modal-independent similarity metric to address image appearance variations
across different image contrasts. We performed evaluations through extensive
experiments in the context of multi-contrast 3D MR images from both public and
private data sources and demonstrate the superior performance of our proposed
methods.
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