Learning Dual Memory Dictionaries for Blind Face Restoration
Xiaoming Li, Shiguang Zhang, Shangchen Zhou, Lei Zhang, Wangmeng Zuo

TL;DR
This paper introduces DMDNet, a dual dictionary-based model that explicitly memorizes generic and specific facial features to improve blind face restoration, handling various scenarios with a unified approach.
Contribution
The paper proposes a novel dual dictionary framework for blind face restoration, explicitly memorizing generic and identity-specific features for improved performance.
Findings
DMDNet outperforms existing methods on face restoration benchmarks.
The dual dictionaries effectively capture both general and identity-specific facial details.
The CelebRef-HQ dataset facilitates high-resolution face restoration research.
Abstract
To improve the performance of blind face restoration, recent works mainly treat the two aspects, i.e., generic and specific restoration, separately. In particular, generic restoration attempts to restore the results through general facial structure prior, while on the one hand, cannot generalize to real-world degraded observations due to the limited capability of direct CNNs' mappings in learning blind restoration, and on the other hand, fails to exploit the identity-specific details. On the contrary, specific restoration aims to incorporate the identity features from the reference of the same identity, in which the requirement of proper reference severely limits the application scenarios. Generally, it is a challenging and intractable task to improve the photo-realistic performance of blind restoration and adaptively handle the generic and specific restoration scenarios with a single…
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Taxonomy
TopicsFacial Nerve Paralysis Treatment and Research · Facial Rejuvenation and Surgery Techniques · Face recognition and analysis
