Variational Encoding and Decoding for Hybrid Supervision of Registration Network

2021 
Various progresses have been made in improving the accuracy of deep learning-based registration. However, there are still some limitations with current methods because of 1) difficulty of acquiring supervised data, 2) challenge of optimizing image similarity and enforcing deformation regularization, and 3) small number of training samples in such an ill-posed problem. It is believed that prior knowledge about the variability of a population could be incorporated to guide the network training to overcome these limitations. In this paper, we propose a group variational decoding-based training strategy to incorporate statistical priors of deformations for network supervision. Specifically, a variational auto-encoder is employed to learn the manifold for reconstructing deformations from a group of valid samples by projecting deformations into a low dimension latent space. Valid transformations can be simulated to serve as the ground-truth for supervised learning of registration. By working alternatively with the conventional unsupervised training, our registration network can better adapt to shape variability and yield accurate and consistent deformations. Experiments on 3D brain magnetic resonance (MR) images show that our proposed method performs better in terms of registration accuracy, consistency, and topological correctness.
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