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Privacy-Preserving Face Recognition Using Random Frequency Components

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The ubiquitous use of face recognition has sparked increasing privacy concerns, as unauthorized access to sensitive face images could compromise the information of individuals. This paper presents an in-depth study of the privacy protection of face images' visual information and against recovery. Drawing on the perceptual disparity between humans and models, we propose to conceal visual information by pruning human-perceivable low-frequency components. For impeding recovery, we first elucidate the seeming paradox between reducing model-exploitable information and retaining high recognition accuracy. Based on recent theoretical insights and our observation on model attention, we propose a solution to the dilemma, by advocating for the training and inference of recognition models on randomly selected frequency components. We distill our findings into a novel privacy-preserving face recognition method, PartialFace. Extensive experiments demonstrate that PartialFace effectively balances privacy protection goals and recognition accuracy. Code is available at: https://github.com/Tencent/TFace.

Yuxi Mi, Yuge Huang, Jiazhen Ji, Minyi Zhao, Jiaxiang Wu, Xingkun Xu, Shouhong Ding, Shuigeng Zhou• 2023

Related benchmarks

TaskDatasetResultRank
Face VerificationCPLFW
Accuracy92.03
188
Face RecognitionCFP-FP
Accuracy97.63
66
Face RecognitionLFW
Accuracy99.8
47
Face RecognitionAgeDB
Accuracy97.79
33
Face RecognitionCALFW
Accuracy96.07
23
Face RecognitionIJB-C
TAR (FAR=1e-4)94.93
19
Face RecognitionIJB-B
TAR @ FAR=1e-493.64
19
Face Representation Storage EfficiencyFace Representation Storage Efficiency
Storage Size9
6
Identity Protection EvaluationSet (test)
Protection (FracFace)68
3
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