PRISM: Rethinking Scattered Atmosphere Reconstruction as a Unified Understanding and Generation Model for Real-world Dehazing
arXiv cs.CV / 4/9/2026
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Key Points
- The PRISM paper addresses real-world image dehazing (RID), which is difficult due to non-uniform haze, spatially varying illumination, and limited paired hazy-clean training data.
- It introduces PSAR (Proximal Scattered Atmosphere Reconstruction), a physically structured framework that jointly reconstructs the clear scene and scattering variables within the atmospheric scattering model.
- To improve robustness in complex scenes and mixed-light conditions, the method targets more reliable reconstruction in regions where standard approaches struggle.
- The authors close the synthetic-to-real gap using an online non-uniform haze synthesis pipeline and a Selective Self-distillation Adaptation scheme for unpaired real-world data.
- Experiments on real-world benchmarks reportedly show PRISM reaching state-of-the-art performance for RID tasks.
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