Paper ID: 2503.14272 • Published Mar 18, 2025
CTSR: Controllable Fidelity-Realness Trade-off Distillation for Real-World Image Super Resolution
Runyi Li, Bin Chen, Jian Zhang, Radu Timofte
Peking University•University of W¨urzburg
TL;DR
Get AI-generated summaries with premium
Get AI-generated summaries with premium
Real-world image super-resolution is a critical image processing task, where
two key evaluation criteria are the fidelity to the original image and the
visual realness of the generated results. Although existing methods based on
diffusion models excel in visual realness by leveraging strong priors, they
often struggle to achieve an effective balance between fidelity and realness.
In our preliminary experiments, we observe that a linear combination of
multiple models outperforms individual models, motivating us to harness the
strengths of different models for a more effective trade-off. Based on this
insight, we propose a distillation-based approach that leverages the geometric
decomposition of both fidelity and realness, alongside the performance
advantages of multiple teacher models, to strike a more balanced trade-off.
Furthermore, we explore the controllability of this trade-off, enabling a
flexible and adjustable super-resolution process, which we call CTSR
(Controllable Trade-off Super-Resolution). Experiments conducted on several
real-world image super-resolution benchmarks demonstrate that our method
surpasses existing state-of-the-art approaches, achieving superior performance
across both fidelity and realness metrics.
Figures & Tables
Unlock access to paper figures and tables to enhance your research experience.