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arxiv:2506.22753

Degradation-Modeled Multipath Diffusion for Tunable Metalens Photography

Published on Jun 28
· Submitted by XiaoyunYuan on Jul 1
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Abstract

The proposed Degradation-Modeled Multipath Diffusion framework improves metalens image quality by using natural image priors and specific modules to balance detail, fidelity, and perceptual quality while addressing optical degradation.

AI-generated summary

Metalenses offer significant potential for ultra-compact computational imaging but face challenges from complex optical degradation and computational restoration difficulties. Existing methods typically rely on precise optical calibration or massive paired datasets, which are non-trivial for real-world imaging systems. Furthermore, a lack of control over the inference process often results in undesirable hallucinated artifacts. We introduce Degradation-Modeled Multipath Diffusion for tunable metalens photography, leveraging powerful natural image priors from pretrained models instead of large datasets. Our framework uses positive, neutral, and negative-prompt paths to balance high-frequency detail generation, structural fidelity, and suppression of metalens-specific degradation, alongside pseudo data augmentation. A tunable decoder enables controlled trade-offs between fidelity and perceptual quality. Additionally, a spatially varying degradation-aware attention (SVDA) module adaptively models complex optical and sensor-induced degradation. Finally, we design and build a millimeter-scale MetaCamera for real-world validation. Extensive results show that our approach outperforms state-of-the-art methods, achieving high-fidelity and sharp image reconstruction. More materials: https://dmdiff.github.io/.

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Project page: https://dmdiff.github.io/

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