Cross-Database Face Antispoofing with Robust Feature Representation

  title={Cross-Database Face Antispoofing with Robust Feature Representation},
  author={Keyurkumar Patel and Hu Han and Anil K. Jain},
With the wide applications of user authentication based on face recognition, face spoof attacks against face recognition systems are drawing increasing attentions. [] Key Method We learn deep texture features from both aligned facial images and whole frames, and use a frame difference based approach for eye-blink detection. A face video clip is classified as live if it is categorized as live using both cues. Cross-database testing on public-domain face databases shows that the proposed approach significantly…

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