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DeepPrivacy: A Generative Adversarial Network for Face Anonymization

About

We propose a novel architecture which is able to automatically anonymize faces in images while retaining the original data distribution. We ensure total anonymization of all faces in an image by generating images exclusively on privacy-safe information. Our model is based on a conditional generative adversarial network, generating images considering the original pose and image background. The conditional information enables us to generate highly realistic faces with a seamless transition between the generated face and the existing background. Furthermore, we introduce a diverse dataset of human faces, including unconventional poses, occluded faces, and a vast variability in backgrounds. Finally, we present experimental results reflecting the capability of our model to anonymize images while preserving the data distribution, making the data suitable for further training of deep learning models. As far as we know, no other solution has been proposed that guarantees the anonymization of faces while generating realistic images.

H{\aa}kon Hukkel{\aa}s, Rudolf Mester, Frank Lindseth• 2019

Related benchmarks

TaskDatasetResultRank
Face DetectionWIDER FACE (val)
mAP (Easy)95.9
62
Face AnonymizationCelebA-HQ official (test)
ReID Score15
40
Face VerificationCelebA-HQ (test)
ReID Score80
8
Face Re-identificationLFW
VGG Error0.015
7
Face Re-identificationCelebA-HQ
VGG Error0.011
7
Face AnonymizationVggface2 top
Attribute Accuracy74.5
6
Face AnonymizationLFW (bottom)
Attribute Accuracy0.792
6
Facial Attribute PreservationLFW
Accuracy91.33
6
Attribute ClassificationCelebA-HQ
Accuracy (Inner face)76.58
4
Face AnonymizationLFW (Labeled Faces in the Wild) (80-20 ratio)
FID23.46
3
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