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Face Anonymization Made Simple

About

Current face anonymization techniques often depend on identity loss calculated by face recognition models, which can be inaccurate and unreliable. Additionally, many methods require supplementary data such as facial landmarks and masks to guide the synthesis process. In contrast, our approach uses diffusion models with only a reconstruction loss, eliminating the need for facial landmarks or masks while still producing images with intricate, fine-grained details. We validated our results on two public benchmarks through both quantitative and qualitative evaluations. Our model achieves state-of-the-art performance in three key areas: identity anonymization, facial attribute preservation, and image quality. Beyond its primary function of anonymization, our model can also perform face swapping tasks by incorporating an additional facial image as input, demonstrating its versatility and potential for diverse applications. Our code and models are available at https://github.com/hanweikung/face_anon_simple .

Han-Wei Kung, Tuomas Varanka, Sanjay Saha, Terence Sim, Nicu Sebe• 2024

Related benchmarks

TaskDatasetResultRank
Face AnonymizationCelebA-HQ official (test)--
40
AnonymizationIndoor
Accuracy84.03
14
AnonymizationCal101
Accuracy94.849
14
Image ClassificationMIT Indoor 67
Accuracy84.03
8
Face AnonymizationFFHQ (test)
Age Error (MAE)6.598
8
Image Anonymization EvaluationCaltech101
CLIP Score30.57
7
Image Anonymization EvaluationMIT Indoor 67
CLIP Score34.52
7
Facial AnonymizationFHQ (FFHQ) (test)
Re-ID Score (SwinFace)24.111
6
Pose PreservationCelebA-HQ
Pose Score0.048
5
Gaze PreservationCelebA-HQ
Gaze Score16.1
5
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