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GLAMpoints: Greedily Learned Accurate Match points

About

We introduce a novel CNN-based feature point detector - GLAMpoints - learned in a semi-supervised manner. Our detector extracts repeatable, stable interest points with a dense coverage, specifically designed to maximize the correct matching in a specific domain, which is in contrast to conventional techniques that optimize indirect metrics. In this paper, we apply our method on challenging retinal slitlamp images, for which classical detectors yield unsatisfactory results due to low image quality and insufficient amount of low-level features. We show that GLAMpoints significantly outperforms classical detectors as well as state-of-the-art CNN-based methods in matching and registration quality for retinal images. Our method can also be extended to other domains, such as natural images. Training code and model weights are available at https://github.com/PruneTruong/GLAMpoints_pytorch.

Prune Truong, Stefanos Apostolopoulos, Agata Mosinska, Samuel Stucky, Carlos Ciller, Sandro De Zanet• 2019

Related benchmarks

TaskDatasetResultRank
Retinal Image RegistrationIR-OCT-OCTA IR-OCT pair
Success Rate (ME <= 7)100
18
Image RegistrationFIRE (test)
Failure Rate [%]0.00e+0
15
Retinal Image RegistrationFIRE (test)
TRE6.608
15
Image RegistrationSlit lamp dataset pre-processed
Failure Rate0.00e+0
14
Identity VerificationBES (test)
EER2.95
14
Identity VerificationVARIA (test)
EER2.00e-4
14
Identity VerificationCLINICAL (test)
EER (%)4.32
14
Retinal Image MatchingFIRE (full)
Failed Rate0.00e+0
11
Multi-modal Retinal Image RegistrationSynthetic retina (test)
SRMHE (eps=1)14.9
11
Image RegistrationCF-FA (public)
SRME (eps=2)25
9
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Other info

Code

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