FUMO: Prior-Modulated Diffusion for Single Image Reflection Removal
arXiv cs.CV / 3/20/2026
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Key Points
- FUMO introduces a diffusion-based prior-modulated framework for single image reflection removal, enabling better spatial controllability and structural faithfulness through explicit priors guiding the conditioning.
- The method derives two priors from the mixed image: an intensity prior for estimating reflection strength and a high-frequency prior that captures detail-sensitive responses via multi-scale residual aggregation.
- A coarse-to-fine training strategy is used, where stage 1 gates conditional residual injections to focus on reflection-dominant and structure-sensitive regions, followed by stage 2 a refinement network that corrects local misalignment and sharpens details.
- Experiments on standard benchmarks and challenging real-world images show competitive quantitative results and improved perceptual quality.
- The authors release the code on GitHub, supporting reproducibility and practical use.
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