Differential Diffusion
D
Differential Diffusion
Overview :
Differential Diffusion is a platform for image generation and editing that allows modification of images based on text prompts and a specified map that defines the variation in each region. It provides customized variation control for each pixel or image area, opening doors to new editing capabilities such as controlling the extent of modification for individual objects or introducing gradient spatial changes. In addition, the platform demonstrates the effectiveness of this framework in the field of image completion, particularly fine-tuning the surrounding areas when seamlessly blending new content. It also offers new tools to explore the effects of different variation amounts. This framework operates solely during inference and does not require model training or fine-tuning. It showcases its integration with the most advanced open-source models and has been validated through quantitative, qualitative comparison, and user studies.
Target Users :
["Generating and editing images","Creative image editing","Image restoration","Image enhancement","Artistic creation","Media content creation"]
Total Visits: 7.1K
Top Region: US(94.17%)
Website Views : 108.2K
Use Cases
Example 1: Editing the input image based on the text prompt 'Life of Trees Under the Sea' and a variation amount map
Example 2: Editing the input image based on the text prompt 'Racing Game' and a discrete variation amount map
Example 3: Editing the input image based on the text prompt 'Dream World' and a continuous variation amount map
Example 4: Integrating Stable Diffusion XL model, editing the input image based on the text prompt 'Wool' and a variation amount map
Features
Editing images based on text prompts
Specifying variation amounts for each region
Controlling the degree of modification for individual objects
Introducing gradient spatial changes
Image seamless completion
Exploring tools for different variation effects
AIbase
Empowering the Future, Your AI Solution Knowledge Base
© 2025AIbase