Reference-Guided Identity Preserving Face Restoration
Reference-Guided Identity Preserving Face Restoration
Preserving face identity is a critical yet persistent challenge in diffusion-based image restoration. While reference faces offer a path forward, existing reference-based methods often fail to fully exploit their potential. This paper introduces a novel approach that maximizes reference face utility for improved face restoration and identity preservation. Our method makes three key contributions: 1) Composite Context, a comprehensive representation that fuses multi-level (high- and low-level) information from the reference face, offering richer guidance than prior singular representations. 2) Hard Example Identity Loss, a novel loss function that leverages the reference face to address the identity learning inefficiencies found in the existing identity loss. 3) A training-free method to adapt the model to multi-reference inputs during inference. The proposed method demonstrably restores high-quality faces and achieves state-of-the-art identity preserving restoration on benchmarks such as FFHQ-Ref and CelebA-Ref-Test, consistently outperforming previous work.
Mo Zhou、Keren Ye、Viraj Shah、Kangfu Mei、Mauricio Delbracio、Peyman Milanfar、Vishal M. Patel、Hossein Talebi
计算技术、计算机技术
Mo Zhou,Keren Ye,Viraj Shah,Kangfu Mei,Mauricio Delbracio,Peyman Milanfar,Vishal M. Patel,Hossein Talebi.Reference-Guided Identity Preserving Face Restoration[EB/OL].(2025-05-27)[2025-07-16].https://arxiv.org/abs/2505.21905.点此复制
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