Facial Data Minimization: Shallow Model as Your Privacy Filter
Yuwen Pu, Jiahao Chen, Jiayu Pan, Hao li, Diqun Yan, Xuhong Zhang,, Shouling Ji

TL;DR
This paper introduces a privacy-preserving data minimization method using shallow models to obfuscate facial data, effectively protecting against data leakage and unauthorized use while maintaining recognition performance.
Contribution
It proposes a novel data privacy minimization transformation (PMT) tailored for face recognition systems, enhancing privacy and robustness against various attacks.
Findings
PMT effectively prevents facial data reconstruction and abuse.
Maintains high face recognition accuracy with authorized models.
Improves robustness through enhanced perturbation methods.
Abstract
Face recognition service has been used in many fields and brings much convenience to people. However, once the user's facial data is transmitted to a service provider, the user will lose control of his/her private data. In recent years, there exist various security and privacy issues due to the leakage of facial data. Although many privacy-preserving methods have been proposed, they usually fail when they are not accessible to adversaries' strategies or auxiliary data. Hence, in this paper, by fully considering two cases of uploading facial images and facial features, which are very typical in face recognition service systems, we proposed a data privacy minimization transformation (PMT) method. This method can process the original facial data based on the shallow model of authorized services to obtain the obfuscated data. The obfuscated data can not only maintain satisfactory…
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Taxonomy
TopicsFace recognition and analysis · Biometric Identification and Security · Privacy-Preserving Technologies in Data
Methodstravel james
