makiyeah/CMRCLIP
> A CMR-report contrastive model combining Vision Transformers and pretrained text encoders.
README
license: mit tags: multimodal medical cardiac cmr clip contrastive-learning vision-transformer clinical-bert libraryname: pytorch pipelinetag: feature-extraction datasets: medical language: en CMRCLIP A CMR-report contrastive model combining Vision Transformers and pretrained text encoders. Model Overview CMRCLIP encodes CMR(Cardiac Magnetic Resonance) images and clinical reports into a shared embedding space for retrieval, similarity scoring, and downstream tasks. It uses: A pretrained text…
- HuggingFace
- https://huggingface.co/makiyeah/CMRCLIP
Source attribution
- HuggingFace — makiyeah/CMRCLIP
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