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Universal Adversarial Spoofing Attacks against Face Recognition

2021-10-02 02:11:22
Takuma Amada, Seng Pei Liew, Kazuya Kakizaki, Toshinori Araki

Abstract

We assess the vulnerabilities of deep face recognition systems for images that falsify/spoof multiple identities simultaneously. We demonstrate that, by manipulating the deep feature representation extracted from a face image via imperceptibly small perturbations added at the pixel level using our proposed Universal Adversarial Spoofing Examples (UAXs), one can fool a face verification system into recognizing that the face image belongs to multiple different identities with a high success rate. One characteristic of the UAXs crafted with our method is that they are universal (identity-agnostic); they are successful even against identities not known in advance. For a certain deep neural network, we show that we are able to spoof almost all tested identities (99\%), including those not known beforehand (not included in training). Our results indicate that a multiple-identity attack is a real threat and should be taken into account when deploying face recognition systems.

Abstract (translated)

URL

https://arxiv.org/abs/2110.00708

PDF

https://arxiv.org/pdf/2110.00708.pdf


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