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Semantic similarity metrics for image registration

Steffen Czolbe, Paraskevas Pegios, Oswin Krause, Aasa Feragen

2023Medical Image Analysis24 citationsDOIOpen Access PDF

Abstract

Image registration aims to find geometric transformations that align images. Most algorithmic and deep learning-based methods solve the registration problem by minimizing a loss function, consisting of a similarity metric comparing the aligned images, and a regularization term ensuring smoothness of the transformation. Existing similarity metrics like Euclidean Distance or Normalized Cross-Correlation focus on aligning pixel intensity values or correlations, giving difficulties with low intensity contrast, noise, and ambiguous matching. We propose a semantic similarity metric for image registration, focusing on aligning image areas based on semantic correspondence instead. Our approach learns dataset-specific features that drive the optimization of a learning-based registration model. We train both an unsupervised approach extracting features with an auto-encoder, and a semi-supervised approach using supplemental segmentation data. We validate the semantic similarity metric using both deep-learning-based and algorithmic image registration methods. Compared to existing methods across four different image modalities and applications, the method achieves consistently high registration accuracy and smooth transformation fields.

Topics & Concepts

Artificial intelligenceImage registrationComputer scienceSimilarity (geometry)Semantic similarityImage (mathematics)Information retrievalMetric (unit)Pattern recognition (psychology)Computer visionNatural language processingEconomicsOperations managementMedical Image Segmentation TechniquesMedical Imaging and AnalysisRadiomics and Machine Learning in Medical Imaging