CVNov 24, 2021

An Attack on Facial Soft-biometric Privacy Enhancement

arXiv:2111.12405v216 citations
Originality Incremental advance
AI Analysis

This work addresses a critical security gap for users of facial recognition systems by exposing vulnerabilities in existing privacy protections, though it is incremental as it builds on prior schemes.

The paper tackles the vulnerability of privacy-enhancing face recognition systems by introducing an attack that exploits similarities in facial representations to infer soft-biometric attributes, achieving up to 90% gender classification accuracy against state-of-the-art methods.

In the recent past, different researchers have proposed privacy-enhancing face recognition systems designed to conceal soft-biometric attributes at feature level. These works have reported impressive results, but generally did not consider specific attacks in their analysis of privacy protection. We introduce an attack on said schemes based on two observations: (1) highly similar facial representations usually originate from face images with similar soft-biometric attributes; (2) to achieve high recognition accuracy, robustness against intra-class variations within facial representations has to be retained in their privacy-enhanced versions. The presented attack only requires the privacy-enhancing algorithm as a black-box and a relatively small database of face images with annotated soft-biometric attributes. Firstly, an intercepted privacy-enhanced face representation is compared against the attacker's database. Subsequently, the unknown attribute is inferred from the attributes associated with the highest obtained similarity scores. In the experiments, the attack is applied against two state-of-the-art approaches. The attack is shown to circumvent the privacy enhancement to a considerable degree and is able to correctly classify gender with an accuracy of up to approximately 90%. Future works on privacy-enhancing face recognition are encouraged to include the proposed attack in evaluations on the privacy protection.

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