alexgenovese/seesr-upscale-and-stable-diffusion-turbo

Image super-resolution model based on SEESR, designed to reconstruct low-resolution images with sharper details and accurate colors.

Public
48 runs

Run time and cost

This model runs on Nvidia L40S GPU hardware. We don't yet have enough runs of this model to provide performance information.

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.