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A Keypoint Detection and Description Network Based on the Vessel Structure for Multi-Modal Retinal Image Registration

About

Ophthalmological imaging utilizes different imaging systems, such as color fundus, infrared, fluorescein angiography, optical coherence tomography (OCT) or OCT angiography. Multiple images with different modalities or acquisition times are often analyzed for the diagnosis of retinal diseases. Automatically aligning the vessel structures in the images by means of multi-modal registration can support the ophthalmologists in their work. Our method uses a convolutional neural network to extract features of the vessel structure in multi-modal retinal images. We jointly train a keypoint detection and description network on small patches using a classification and a cross-modal descriptor loss function and apply the network to the full image size in the test phase. Our method demonstrates the best registration performance on our and a public multi-modal dataset in comparison to competing methods.

Aline Sindel, Bettina Hohberger, Sebastian Fassihi Dehcordi, Christian Mardin, Robert L\"ammer, Andreas Maier, Vincent Christlein (1) __INSTITUTION_7__ Pattern Recognition Lab, FAU Erlangen-N\"urnberg, (2) Department of Ophthalmology, Universit\"atsklinikum Erlangen)• 2022

Related benchmarks

TaskDatasetResultRank
Retinal Image RegistrationIR-OCT-OCTA IR-OCT pair
Success Rate (ME <= 7)100
18
Multi-modal Retinal Image RegistrationSynthetic retina (test)
SRMHE (eps=1)13.7
11
Retinal Image RegistrationIR-OCT-OCTA IR-OCTA pair
Success Rate (ME <= 7)81.7
9
Image RegistrationCF-FA (public)
SRME (eps=2)71.4
9
Retinal Image RegistrationIR-OCT-OCTA All pairs
Success Rate (ME <= 7)86.7
9
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