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arXiv:1803.00951 [cs.CV]AbstractReferencesReviewsResources

Multimodal Registration of Retinal Images Using Domain-Specific Landmarks and Vessel Enhancement

Álvaro S. Hervella, José Rouco, Jorge Novo, Marcos Ortega

Published 2018-03-02Version 1

The analysis of different image modalities is frequently performed in ophthalmology as they provide complementary information for the diagnosis and follow-up of relevant diseases, like hypertension or diabetes. This work presents an hybrid method for the multimodal registration of color fundus retinography and fluorescein angiography. The proposed method combines a feature-based approach, using domain-specific landmarks, with an intensity-based approach that employs a domain-adapted similarity metric. The methodology was tested on a dataset of 59 image pairs containing both healthy and pathological cases. The results show a satisfactory performance of the proposed combined approach in the multimodal scenario, improving the registration accuracy achieved by the feature-based and the intensity-based methods.

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