

Swinir
Overview :
SwinIR is the official PyTorch implementation of an image restoration model based on Swin Transformer. It achieves state-of-the-art performance on tasks such as classic, lightweight, and real-world image super-resolution, grayscale/color image denoising, and JPEG compression artifact removal. It consists of shallow feature extraction, deep feature extraction, and high-quality image reconstruction, with excellent performance and parameter optimization.
Target Users :
Used for image restoration tasks, including improving image resolution, removing noise, and removing compression artifacts.
Use Cases
Super-resolve low-quality images.
Remove noise from images to enhance image quality.
Reduce JPEG compression artifacts to improve image details.
Features
Classic, lightweight, and real-world image super-resolution
Grayscale/color image denoising
JPEG compression artifact removal
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