AuraSR
Property | Value |
---|---|
Parameter Count | 618M |
Model Type | GAN-based Super-Resolution |
License | Creative Commons |
Tensor Type | F32 |
Framework | PyTorch |
What is AuraSR?
AuraSR is an advanced GAN-based super-resolution model designed specifically for upscaling generated images. It's built as a variation of the GigaGAN architecture, focusing on image-conditioned upscaling with impressive 4x magnification capabilities. The model leverages PyTorch for implementation and is based on the unofficial gigagan-pytorch repository by lucidrains.
Implementation Details
The model is implemented using PyTorch and comes with 618M parameters, making it a robust solution for high-quality image upscaling. It uses F32 tensor types and is distributed as Safetensors, ensuring efficient model loading and inference.
- Based on GigaGAN architecture
- PyTorch implementation
- 4x upscaling capability
- Supports easy integration via pip install
Core Capabilities
- 4x image upscaling
- Specialized in handling generated images
- Easy-to-use Python API
- Supports batch processing
- Maintains image quality during upscaling
Frequently Asked Questions
Q: What makes this model unique?
AuraSR stands out for its specific optimization for generated images and its implementation of the GigaGAN architecture, providing high-quality 4x upscaling while maintaining image fidelity.
Q: What are the recommended use cases?
The model is particularly well-suited for upscaling AI-generated images, digital art, and other synthetic imagery where maintaining quality during upscaling is crucial. It's ideal for content creators, digital artists, and developers working with generated imagery.