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Learnable Ophthalmology SAM

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arxiv 2304.13425 v1 pith:P3BG7PAF submitted 2023-04-26 cs.CV

Learnable Ophthalmology SAM

classification cs.CV
keywords layerlearnableophthalmologysegmentationmedicalpromptanythingavailable
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Segmentation is vital for ophthalmology image analysis. But its various modal images hinder most of the existing segmentation algorithms applications, as they rely on training based on a large number of labels or hold weak generalization ability. Based on Segment Anything (SAM), we propose a simple but effective learnable prompt layer suitable for multiple target segmentation in ophthalmology multi-modal images, named Learnable Ophthalmology Segment Anything (SAM). The learnable prompt layer learns medical prior knowledge from each transformer layer. During training, we only train the prompt layer and task head based on a one-shot mechanism. We demonstrate the effectiveness of our thought based on four medical segmentation tasks based on nine publicly available datasets. Moreover, we only provide a new improvement thought for applying the existing fundamental CV models in the medical field. Our codes are available at \href{https://github.com/Qsingle/LearnablePromptSAM}{website}.

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