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Correlation Ratio for Unsupervised Learning of Multi-modal Deformable Registration

Correlation Ratio for Unsupervised Learning of Multi-modal Deformable Registration

来源:Arxiv_logoArxiv
英文摘要

In recent years, unsupervised learning for deformable image registration has been a major research focus. This approach involves training a registration network using pairs of moving and fixed images, along with a loss function that combines an image similarity measure and deformation regularization. For multi-modal image registration tasks, the correlation ratio has been a widely-used image similarity measure historically, yet it has been underexplored in current deep learning methods. Here, we propose a differentiable correlation ratio to use as a loss function for learning-based multi-modal deformable image registration. This approach extends the traditionally non-differentiable implementation of the correlation ratio by using the Parzen windowing approximation, enabling backpropagation with deep neural networks. We validated the proposed correlation ratio on a multi-modal neuroimaging dataset. In addition, we established a Bayesian training framework to study how the trade-off between the deformation regularizer and similarity measures, including mutual information and our proposed correlation ratio, affects the registration performance.

Xiaojian Chen、Yihao Liu、Shuwen Wei、Aaron Carass、Yong Du、Junyu Chen

计算技术、计算机技术

Xiaojian Chen,Yihao Liu,Shuwen Wei,Aaron Carass,Yong Du,Junyu Chen.Correlation Ratio for Unsupervised Learning of Multi-modal Deformable Registration[EB/OL].(2025-04-16)[2025-05-06].https://arxiv.org/abs/2504.12265.点此复制

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