Feb. 1, 2024, 12:42 p.m. | Hao Fang Ajian Liu Haocheng Yuan Junze Zheng Dingheng Zeng Yanhong Liu Jiankang Deng Sergio Es

cs.CV updates on arXiv.org arxiv.org

Face Recognition (FR) systems can suffer from physical (i.e., print photo) and digital (i.e., DeepFake) attacks. However, previous related work rarely considers both situations at the same time. This implies the deployment of multiple models and thus more computational burden. The main reasons for this lack of an integrated model are caused by two factors: (1) The lack of a dataset including both physical and digital attacks with ID consistency which means the same ID covers the real face and …

attacks computational cs.cv deepfake deployment detection digital face face recognition multiple photo recognition systems work

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