Invertible Mask Network for Face Privacy-Preserving
- URL: http://arxiv.org/abs/2204.08895v1
- Date: Tue, 19 Apr 2022 13:44:46 GMT
- Title: Invertible Mask Network for Face Privacy-Preserving
- Authors: Yang Yang, Yiyang Huang, Ming Shi, Kejiang Chen, Weiming Zhang,
Nenghai Yu
- Abstract summary: This paper proposes face privacy-preserving method based on Invertible "Mask" Network (IMN)
The proposed method can not only effectively protect the privacy of the protected face, but also almost perfectly recover the protected face from the masked face.
- Score: 101.08196206784376
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Face privacy-preserving is one of the hotspots that arises dramatic interests
of research. However, the existing face privacy-preserving methods aim at
causing the missing of semantic information of face and cannot preserve the
reusability of original facial information. To achieve the naturalness of the
processed face and the recoverability of the original protected face, this
paper proposes face privacy-preserving method based on Invertible "Mask"
Network (IMN). In IMN, we introduce a Mask-net to generate "Mask" face firstly.
Then, put the "Mask" face onto the protected face and generate the masked face,
in which the masked face is indistinguishable from "Mask" face. Finally, "Mask"
face can be put off from the masked face and obtain the recovered face to the
authorized users, in which the recovered face is visually indistinguishable
from the protected face. The experimental results show that the proposed method
can not only effectively protect the privacy of the protected face, but also
almost perfectly recover the protected face from the masked face.
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