2023
DOI: 10.1002/ima.23006
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Few‐shot segmentation for esophageal OCT images based on self‐supervised vision transformer

Cong Wang,
Meng Gan

Abstract: Automatic segmentation of layered tissue is the key to optical coherence tomography (OCT) image analysis for esophagus. While deep learning technology offers promising solutions to this problem, the requirement for large numbers of annotated samples often poses a significant obstacle, as it is both expensive and challenging to obtain. With this in mind, we introduced a self‐supervised segmentation framework for esophageal OCT images. In particular, the proposed method employs a masked autoencoder (MAE) for sel… Show more

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