2023
DOI: 10.21203/rs.3.rs-3783494/v1
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Visual Prompting based Incremental Learning forSemantic Segmentation of MultiplexImmuno-Flourescence Microscopy Imagery

Ryan Faulkenberry,
Saurabh Prasad,
Dragan Maric
et al.

Abstract: Deep learning approaches are state-of-the-art for semantic segmentation of medical images, but unlike many deep learning applications, medical segmentation is characterized by small amounts of annotated training data. Thus, while mainstream deep learning approaches focus on performance in domains with large training sets, researchers in the medical imaging field must apply new methods in creative ways to meet the more constrained requirements of medical datasets. We propose a framework for incrementally fine-t… Show more

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