KangLiao929 / Noise-DA
[ICLR 2025] Denoising as Adaptation: Noise-Space Domain Adaptation for Image Restoration
☆36Updated 2 weeks ago
Alternatives and similar repositories for Noise-DA:
Users that are interested in Noise-DA are comparing it to the libraries listed below
- ☆49Updated last year
- [CVIU 2024] Coarse-to-Fine Mechanisms Mitigate Diffusion Limitations on Image Restoration☆41Updated 6 months ago
- [arXiv 2024] LoRA-IR: Taming Low-Rank Experts for Efficient All-in-One Image Restoration☆50Updated 3 months ago
- Towards Effective Multiple-in-One Image Restoration: A Sequential and Prompt Learning Strategy☆69Updated 11 months ago
- ECCV2024:A Comparative Study of Image Restoration Networks for General Backbone Network Design☆90Updated last month
- Official PyTorch implementation of "Temporal As a Plugin: Unsupervised Video Denoising with Pre-Trained Image Denoisers" in ECCV 2024.☆24Updated 5 months ago
- Xformer: Hybrid X-Shaped Transformer for Image Denoising☆40Updated last year
- Official Implementation of "Neural Degradation Representation Learning for All-In-One Image Restoration"☆27Updated 3 months ago
- ☆55Updated 3 months ago
- Implementation code for WaveDM: Wavelet-Based Diffusion Models for Image Restoration.☆37Updated 2 months ago
- The official Pytorch Implementation of AnyIR for All in One Image Restoration☆24Updated last month
- Official dataset and codes of Continuous Optical Zooming: A Benchmark for Arbitrary-Scale Image Super-Resolution in Real World[CVPR2024].☆34Updated last week
- Learning Enriched Features via Selective State Spaces Model for Efficient Image Deblurring☆34Updated this week
- CVPR2024: Transfer CLIP for Generalizable Image Denoising☆64Updated 8 months ago
- ☆51Updated 7 months ago
- Rethinking Transformer-Based Blind-Spot Network for Self-Supervised Image Denoising (AAAI 2025)☆39Updated last month
- Distortion invariant feature learning for image restoration from a causality perspective☆47Updated last year
- [PRCV 2023] RBSR: Efficient and Flexible Recurrent Network for Burst Super-Resolution