Analysis of Generative Data Augmentation for Face Antispoofing


연구 분야: Strategies



학회: International Conference on Pattern Recognition Applications and Methods


초록

As technology advances, criminals continually find innovative ways to gain unauthorised access, increasing face spoofing challenges for face recognition systems. This demands the development of robust presentation attack detection methods. While traditional face antispoofing techniques relied on human-engineered features, they often lacked optimal representation capacity, creating a void that deep learning has begun to address in recent times. Nonetheless, these deep learning strategies still demand enhancement, particularly in uncontrolled environments. In this study, we employ generative models for data augmentation to boost the face antispoofing efficacy of a vision transformer. We also introduce an unsupervised keyframe selection process to yield superior candidate samples. Comprehensive benchmarks against recent models reveal that our augmentation methods significantly bolster the baseline performance on the CASIA-FASD dataset and deliver state-of-the-art results on the Spoof in the Wild database for protocols 2 and 3.


Author Profile
Jarred Orfao

Academy of Computer Science and Software Engineering University of Johannesburg Kingsway Avenue and University Rd Auckland Park Johannesburg South Africa

Andorra
Author Profile
Dustin van der Haar

Academy of Computer Science and Software Engineering University of Johannesburg Kingsway Avenue and University Rd Auckland Park Johannesburg South Africa

Andorra

📄 논문 정보

발행 연도 2024년
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출판 국가 Andorra
사이트 Springer
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