MetaSR: Content-Adaptive Metadata Orchestration for Generative Super-Resolution
arXiv cs.AI / 4/30/2026
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Key Points
- The paper addresses generative super-resolution in realistic settings where both the image/video content and degradations vary widely, requiring different side information for different segments.
- It proposes MetaSR, a Diffusion Transformer (DiT)-based method that adaptively selects and injects task-relevant metadata instead of using a fixed conditioning design.
- MetaSR leverages the DiT’s own VAE and transformer backbone to fuse heterogeneous metadata, and introduces an efficient distillation approach to enable one-step diffusion inference.
- Experiments across diverse content and degradation regimes show improvements of up to 1.0 dB PSNR over reference methods and up to 50% transmission bitrate savings at comparable quality, evaluated via a rate–distortion optimization framework.
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