G²Face: High-Fidelity Reversible Face Anonymization via Generative and Geometric Priors | IEEE Journals & Magazine | IEEE Xplore

G²Face: High-Fidelity Reversible Face Anonymization via Generative and Geometric Priors


Abstract:

Reversible face anonymization, unlike traditional face pixelization, seeks to replace sensitive identity information in facial images with synthesized alternatives, prese...Show More

Abstract:

Reversible face anonymization, unlike traditional face pixelization, seeks to replace sensitive identity information in facial images with synthesized alternatives, preserving privacy without sacrificing image clarity. Traditional methods, such as encoder-decoder networks, often result in significant loss of facial details due to their limited learning capacity. Additionally, relying on latent manipulation in pre-trained GANs can lead to changes in ID-irrelevant attributes, adversely affecting data utility due to GAN inversion inaccuracies. This paper introduces G2Face, which leverages both generative and geometric priors to enhance identity manipulation, achieving high-quality reversible face anonymization without compromising data utility. We utilize a 3D face model to extract geometric information from the input face, integrating it with a pre-trained GAN-based decoder. This synergy of generative and geometric priors allows the decoder to produce realistic anonymized faces with consistent geometry. Moreover, multi-scale facial features are extracted from the original face and combined with the decoder using our novel identity-aware feature fusion blocks (IFF). This integration enables precise blending of the generated facial patterns with the original ID-irrelevant features, resulting in accurate identity manipulation. Extensive experiments demonstrate that our method outperforms existing state-of-the-art techniques in face anonymization and recovery, while preserving high data utility. Code is available at https://github.com/Harxis/G2Face.
Page(s): 8773 - 8785
Date of Publication: 23 August 2024

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I. Introduction

Recent advancements in deep learning and computer vision have significantly enhanced everyday convenience, but they have also raised substantial security concerns. This is particularly evident in the widespread sharing of personal facial images on social media, which creates a considerable risk of privacy breaches in case of unauthorized access. To address this, a surge of research [1], [2], [3], [4], [5], [6], [7] has focused on face anonymization technology, which aims to alter the identity in facial images while preserving other ID-irrelevant attributes [8], such as hairstyles, expressions, and background. This technology ensures the privacy of facial images, maintaining their usefulness for various downstream tasks like face detection, tracking, and landmark detection.

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