georgosgeorgos/few-shot-diffusion-models
Few-Shot Diffusion Models
This project helps researchers in machine learning or computer vision to generate new, high-quality images for categories that they have very little data for. By providing as few as five example images from a new category, this tool can create many more similar images. It's designed for those working with limited datasets who need to expand their image collections for unseen classes.
115 stars. No commits in the last 6 months.
Use this if you need to generate a diverse set of new images for a category where you only have a handful of existing examples.
Not ideal if you already have a large dataset for your target image category or if you are not working with image generation tasks.
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115
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10
Language
Python
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Last pushed
Jan 10, 2023
Commits (30d)
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