Authors
Steffen Czolbe, Oswin Krause, Aasa Feragen
Publication date
2021/8/25
Conference
Medical Imaging with Deep Learning
Pages
105-118
Publisher
PMLR
Description
We propose a semantic similarity metric for image registration. Existing metrics like euclidean distance or normalized cross-correlation focus on aligning intensity values, giving difficulties with low intensity contrast or noise. Our approach learns dataset-specific features that drive the optimization of a learning-based registration model. We train both an unsupervised approach using an auto-encoder, and a semi-supervised approach using supplemental segmentation data to extract semantic features for image registration. Comparing to existing methods across multiple image modalities and applications, we achieve consistently high registration accuracy. A learned invariance to noise gives smoother transformations on low-quality images.
Total citations
20202021202220232024112105
Scholar articles
S Czolbe, O Krause, A Feragen - Medical Imaging with Deep Learning, 2021