CVAIOct 2, 2021

FICGAN: Facial Identity Controllable GAN for De-identification

arXiv:2110.00740v119 citations
Originality Incremental advance
AI Analysis

This addresses privacy concerns in face data for applications like surveillance or data sharing, but it is incremental as it builds on existing GAN and de-identification techniques.

The paper tackles the problem of generating high-quality de-identified face images with privacy protection and attribute controllability, achieving enhanced privacy through a manifold k-same algorithm and outperforming other methods in various scenarios.

In this work, we present Facial Identity Controllable GAN (FICGAN) for not only generating high-quality de-identified face images with ensured privacy protection, but also detailed controllability on attribute preservation for enhanced data utility. We tackle the less-explored yet desired functionality in face de-identification based on the two factors. First, we focus on the challenging issue to obtain a high level of privacy protection in the de-identification task while uncompromising the image quality. Second, we analyze the facial attributes related to identity and non-identity and explore the trade-off between the degree of face de-identification and preservation of the source attributes for enhanced data utility. Based on the analysis, we develop Facial Identity Controllable GAN (FICGAN), an autoencoder-based conditional generative model that learns to disentangle the identity attributes from non-identity attributes on a face image. By applying the manifold k-same algorithm to satisfy k-anonymity for strengthened security, our method achieves enhanced privacy protection in de-identified face images. Numerous experiments demonstrate that our model outperforms others in various scenarios of face de-identification.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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