arXiv Open Access 2026

A2BFR: Attribute-Aware Blind Face Restoration

Chenxin Zhu Yushun Fang Lu Liu Shibo Yin Xiaohong Liu +3 lainnya
Lihat Sumber

Abstrak

Blind face restoration (BFR) aims to recover high-quality facial images from degraded inputs, yet its inherently ill-posed nature leads to ambiguous and uncontrollable solutions. Recent diffusion-based BFR methods improve perceptual quality but remain uncontrollable, whereas text-guided face editing enables attribute manipulation without reliable restoration. To address these issues, we propose A$^2$BFR, an attribute-aware blind face restoration framework that unifies high-fidelity reconstruction with prompt-controllable generation. Built upon a Diffusion Transformer backbone with unified image-text cross-modal attention, A$^2$BFR jointly conditions the denoising trajectory on both degraded inputs and textual prompts. To inject semantic priors, we introduce attribute-aware learning, which supervises denoising latents using facial attribute embeddings extracted by an attribute-aware encoder. To further enhance prompt controllability, we introduce semantic dual-training, which leverages the pairwise attribute variations in our newly curated AttrFace-90K dataset to enforce attribute discrimination while preserving fidelity. Extensive experiments demonstrate that A$^2$BFR achieves state-of-the-art performance in both restoration fidelity and instruction adherence, outperforming diffusion-based BFR baselines by -0.0467 LPIPS and +52.58% attribute accuracy, while enabling fine-grained, prompt-controllable restoration even under severe degradations.

Topik & Kata Kunci

Penulis (8)

C

Chenxin Zhu

Y

Yushun Fang

L

Lu Liu

S

Shibo Yin

X

Xiaohong Liu

X

Xiaoyun Zhang

Q

Qiang Hu

G

Guangtao Zhai

Format Sitasi

Zhu, C., Fang, Y., Liu, L., Yin, S., Liu, X., Zhang, X. et al. (2026). A2BFR: Attribute-Aware Blind Face Restoration. https://arxiv.org/abs/2603.29423

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Tahun Terbit
2026
Bahasa
en
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arXiv
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Open Access ✓