We explore retinal vessel segmentation under scarce annotations with self-supervised learning. A masked autoencoder first learns domain-specific retinal structure from abundant unlabeled fundus images. We then transfer the pretrained encoder to downstream tasks—principally vessel segmentation—by fine-tuning on a small labeled set, achieving finer vessel recovery.
Retinal Vessel Segmentation with Masked Auto Encoders
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