MeInTime: Bridging Age Gap in Identity-Preserving Face Restoration
arXiv cs.CV / 3/20/2026
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Key Points
- MeInTime extends reference-based face restoration to cross-age settings by using one or more reference images and an age prompt to ensure identity fidelity and age consistency, addressing real-world scenarios like historical photo restoration.
- The method decouples identity and age conditioning, introducing a novel attention mechanism to inject identity features and Gated Residual Fusion modules to integrate degraded features with identity representations.
- At inference, it proposes Age-Aware Gradient Guidance, a training-free sampling strategy that nudges the identity-aware denoising latent toward the desired age semantic manifold.
- Extensive experiments show MeInTime outperforms existing face restoration methods in both identity preservation and age consistency, with the code released on GitHub.
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