Unified Image-to-Image Generation for Diverse Medical Vision Tasks
DOI:
https://doi.org/10.31224/5017Abstract
This paper introduces a novel framework that unifies various medical vision tasks, including synthesis, segmentation, denoising, and inpainting, into a single image-to-image generation process. By treating these tasks as conditional image generation problems, the proposed approach enables a generalist model to handle diverse inputs and outputs across different modalities and datasets. The effectiveness of this unification strategy is demonstrated through a comprehensive evaluation on a curated medical vision benchmark, showcasing its potential to simplify and enhance medical image analysis.
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