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arxiv:2502.06324

UniDemoiré: Towards Universal Image Demoiréing with Data Generation and Synthesis

Published on Feb 10, 2025
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Abstract

UniDemoiré addresses image demoiréing challenges through universal generalization via innovative data generation methods that produce high-quality moiré images for training.

AI-generated summary

Image demoiréing poses one of the most formidable challenges in image restoration, primarily due to the unpredictable and anisotropic nature of moiré patterns. Limited by the quantity and diversity of training data, current methods tend to overfit to a single moiré domain, resulting in performance degradation for new domains and restricting their robustness in real-world applications. In this paper, we propose a universal image demoiréing solution, UniDemoiré, which has superior generalization capability. Notably, we propose innovative and effective data generation and synthesis methods that can automatically provide vast high-quality moiré images to train a universal demoiréing model. Our extensive experiments demonstrate the cutting-edge performance and broad potential of our approach for generalized image demoiréing.

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