AI Navigate

Face anonymization preserving facial expressions and photometric realism

arXiv cs.CV / 3/19/2026

📰 NewsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper proposes a feature-preserving face anonymization framework that uses dense facial landmarks to better retain expressions while concealing identity.
  • It introduces lightweight post-processing modules to enforce photometric consistency in lighting and skin color, improving relighting and color stability.
  • The authors define evaluation metrics focused on expression fidelity, lighting consistency, and color preservation in addition to standard measures like realism, pose accuracy, and re-identification resistance.
  • Experiments on CelebA-HQ show improved realism and higher fidelity in expressions, illumination, and skin tone compared with state-of-the-art baselines, highlighting the approach's value for privacy-preserving facial data.

Abstract

The widespread sharing of face images on social media platforms and in large-scale datasets raises pressing privacy concerns, as biometric identifiers can be exploited without consent. Face anonymization seeks to generate realistic facial images that irreversibly conceal the subject's identity while preserving their usefulness for downstream tasks. However, most existing generative approaches focus on identity removal and image realism, often neglecting facial expressions as well as photometric consistency -- specifically attributes such as illumination and skin tone -- that are critical for applications like relighting, color constancy, and medical or affective analysis. In this work, we propose a feature-preserving anonymization framework that extends DeepPrivacy by incorporating dense facial landmarks to better retain expressions, and by introducing lightweight post-processing modules that ensure consistency in lighting direction and skin color. We further establish evaluation metrics specifically designed to quantify expression fidelity, lighting consistency, and color preservation, complementing standard measures of image realism, pose accuracy, and re-identification resistance. Experiments on the CelebA-HQ dataset demonstrate that our method produces anonymized faces with improved realism and significantly higher fidelity in expression, illumination, and skin tone compared to state-of-the-art baselines. These results underscore the importance of feature-aware anonymization as a step toward more useful, fair, and trustworthy privacy-preserving facial data.