siyi-wind/AViT
[MICCAI ISIC Workshop 2023 (best paper)] AViT: Adapting Vision Transformers for Small Skin Lesion Segmentation Datasets (an official implementation)
This project helps medical researchers and dermatologists accurately identify and outline skin lesions from medical images. You input dermoscopy images, and the system outputs precise segmentations of the lesions, highlighting their exact boundaries. This is especially useful for those working with smaller datasets of skin images for research or diagnostic support.
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Use this if you need to precisely segment skin lesions from medical images, particularly when you have a limited number of training images available.
Not ideal if you are looking for a pre-trained, ready-to-use clinical diagnostic tool rather than a research framework for image segmentation.
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Python
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Last pushed
Jan 12, 2024
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