milad1378yz/MOTFM
Flow Matching for Medical Image Synthesis: Bridging the Gap Between Speed and Quality
This tool helps medical researchers and practitioners generate synthetic medical images quickly while maintaining high quality. You provide existing medical image datasets (like 2D or 3D scans with optional masks and class labels), and it outputs new, realistic synthetic images. It's designed for medical imaging specialists who need to augment their datasets without sacrificing image fidelity.
Use this if you need to rapidly create a large volume of high-quality synthetic 2D or 3D medical images for research, training, or data augmentation.
Not ideal if you're looking for a user-friendly application with a graphical interface, as this requires command-line interaction and data preparation in a specific format.
Stars
64
Forks
8
Language
Python
License
MIT
Category
Last pushed
Mar 16, 2026
Commits (30d)
0
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