Can representation learning for multimodal image registration be improved by supervision of intermediate layers?

Elisabeth Wetzer, Joakim Lindblad, Natavsa Sladoje
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引用次数: 1

Abstract

Multimodal imaging and correlative analysis typically require image alignment. Contrastive learning can generate representations of multimodal images, reducing the challenging task of multimodal image registration to a monomodal one. Previously, additional supervision on intermediate layers in contrastive learning has improved biomedical image classification. We evaluate if a similar approach improves representations learned for registration to boost registration performance. We explore three approaches to add contrastive supervision to the latent features of the bottleneck layer in the U-Nets encoding the multimodal images and evaluate three different critic functions. Our results show that representations learned without additional supervision on latent features perform best in the downstream task of registration on two public biomedical datasets. We investigate the performance drop by exploiting recent insights in contrastive learning in classification and self-supervised learning. We visualize the spatial relations of the learned representations by means of multidimensional scaling, and show that additional supervision on the bottleneck layer can lead to partial dimensional collapse of the intermediate embedding space.
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多模态图像配准的表示学习能否通过中间层的监督得到改善?
多模态成像和相关分析通常需要图像对齐。对比学习可以生成多模态图像的表示,将多模态图像配准的挑战性任务降低到单模态。以前,在对比学习中对中间层的额外监督改进了生物医学图像分类。我们评估了类似的方法是否可以改善注册学习的表示以提高注册性能。我们探索了三种方法来对多模态图像编码的U-Nets中瓶颈层的潜在特征进行对比监督,并评估了三种不同的批评函数。我们的研究结果表明,在没有对潜在特征进行额外监督的情况下学习的表征在两个公共生物医学数据集的下游注册任务中表现最好。我们通过利用最近在分类和自监督学习中对比学习的见解来研究性能下降。我们通过多维尺度将学习到的表示的空间关系可视化,并表明对瓶颈层的额外监督会导致中间嵌入空间的部分维数崩溃。
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