Synth-by-Reg (SbR):基于合成的配对图像配准的对比学习。

Adrià Casamitjana, Matteo Mancini, Juan Eugenio Iglesias
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引用次数: 9

摘要

由于缺乏作为对齐的良好代理的目标函数,非线性模态间配准通常具有挑战性。在这里,我们提出了一种通过配准进行综合的方法,将这个问题转化为一个更容易的模态内任务。我们为不需要完全对齐的训练数据的域之间的弱监督图像转换引入了配准损失。这一损失利用了具有冻结权重的注册U-Net,以推动合成CNN朝着所需的翻译方向发展。我们用基于对比学习的结构保持约束来弥补这种损失,该约束防止了由于过拟合而导致的模糊和内容偏移。我们将这种方法应用于组织学切片与MRI切片的配准,这是3D组织学重建的关键步骤。在两个公共数据集上的结果显示,与基于互信息的注册(里程碑误差减少13%)和基于合成的算法(如CycleGAN)(减少11%)相比,有了改进,并且与使用标签监督的注册相当。代码和数据可在https://github.com/acasamitjana/SynthByReg.
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Synth-by-Reg (SbR): Contrastive learning for synthesis-based registration of paired images.

Synth-by-Reg (SbR): Contrastive learning for synthesis-based registration of paired images.

Nonlinear inter-modality registration is often challenging due to the lack of objective functions that are good proxies for alignment. Here we propose a synthesis-by-registration method to convert this problem into an easier intra-modality task. We introduce a registration loss for weakly supervised image translation between domains that does not require perfectly aligned training data. This loss capitalises on a registration U-Net with frozen weights, to drive a synthesis CNN towards the desired translation. We complement this loss with a structure preserving constraint based on contrastive learning, which prevents blurring and content shifts due to overfitting. We apply this method to the registration of histological sections to MRI slices, a key step in 3D histology reconstruction. Results on two public datasets show improvements over registration based on mutual information (13% reduction in landmark error) and synthesis-based algorithms such as CycleGAN (11% reduction), and are comparable to registration with label supervision. Code and data are publicly available at https://github.com/acasamitjana/SynthByReg.

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