RAW-Domain Degradation Models for Realistic Smartphone Super-Resolution
arXiv cs.CV / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper tackles the challenge of training realistic smartphone super-resolution (SR) models using RAW sensor images, highlighting how synthetic degradations can create domain gaps when ground-truth data is unavailable.
- It proposes device-specific degradation modeling by calibrating and unprocessing publicly available rendered images into the RAW domain of different smartphones, instead of relying on generic blur and noise priors.
- A single-image RAW-to-RGB SR model is trained using these device-specific degraded image pairs and evaluated on a held-out device to test real-world performance.
- Experiments show that accurate, principled degradation modeling yields noticeable improvements over baselines trained on broad sets of arbitrary degradations, underscoring the importance of realistic degradation pipelines for practical SR.
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