Readme
SEESR Super-Resolution + Stable Diffusion Turbo
About
This is a Cog implementation of SEESR, an advanced AI image super-resolution model.It is designed to upscale low-resolution or compressed images into high-definition versions with enhanced sharpness, fine textures, and accurate color reproduction.
I added Stable Diffusion Turbo for a faster inference and better output in few steps.
SEESR is ideal for:
-
AI photo restoration
-
Image upscaling for prints or digital media
-
Enhancing old or compressed images
-
Improving visual quality for machine learning pipelines
Optimized for Replicate AI deployment, this model delivers fast inference times and production-ready results.
Examples
Check the Examples tab for before-and-after comparisons, including:
-
Portrait restoration with fine facial details
-
Landscape upscaling with enhanced textures
-
Text clarity improvement for scanned documents
How to run
Run on ReplicateUpload or assign your input image under the image parameter to get a high-resolution output.
The model will output an enhanced image with improved sharpness, detail, and color accuracy.
Config options (via cog.yaml) include:
-
Output resolution scale factor
-
Image quality and compression settings
-
Inference performance tweaks
Licensing & Commercial Use
This project is released under the MIT License.You are free to use, modify, and distribute it for both personal and commercial purposes.