CAASR: A Real-World Animation Super-Resolution Benchmark with Color Degradation and Multi-Scale Multi-Frequency Alignment (TIP 2025)
CAASR is a benchmark designed to advance the frontier of animation super-resolution.
It features a high-quality dataset and a dedicated training pipeline for both 2D and 3D animated content, with a focus on color degradation, frequency alignment, and scale adaptability.
- 👌 Tools Coming Soon
- ✅ 2025.07.26 – Pretrained Weights Added
- ✅ 2025.07.25 – Dataset Added
- ✅ 2025.07.21 – Code Released
(Coming Soon)
(Instructions Coming Soon)
- Full Training Dataset (2D & 3D animation sequences):
Baidu Drive (code:a135)
- Evaluation Dataset:
Baidu Drive (code:a135)
- Pretrained Models (2D & 3D animation):
Baidu Drive (code:a135) | Google Drive - Weights for Comparison Methods:
Baidu Drive (code:a135) | Google Drive
- Configure degradation strategies and choose scale-aware architectures according to your animation content and downstream tasks.
- We adopt PYIQA for perceptual quality assessment.
- 2D Animation: Default configurations are applied.
- 3D Animation: Fine-tuned MANIQA and TReS models are provided.
Baidu Drive (code:a135) | Google Drive
(Coming Soon)
If you find our work useful, please consider citing:
@article{animationSR,
title = {{A Real-World Animation Super-Resolution Benchmark with Color Degradation and Multi-Scale Multi-Frequency Alignment}},
author = {Jiang, Yu and Zhang, Yongji and Li, Siqi and Huang, Yang and Wang, Yuehang and Yao, Yutong and Gao, Yue},
journal = {IEEE Transactions on Image Processing},
year = {2025}
}