Face Presentation Attack Detection
Face presentation attack detection (PAD) aims to secure face recognition systems by identifying spoofing attempts, such as using photos, videos, or masks. Current research focuses on improving the generalization of PAD models to unseen attacks and domains, employing techniques like multispectral imaging, 3D point cloud analysis, and novel deep learning architectures such as Vision Transformers and Generative Adversarial Networks. This field is crucial for enhancing the security and reliability of face recognition systems across various applications, from smartphone authentication to high-stakes security scenarios, and ongoing research addresses challenges like bias and privacy concerns related to training data.
Papers
VLAD-VSA: Cross-Domain Face Presentation Attack Detection with Vocabulary Separation and Adaptation
Jiong Wang, Zhou Zhao, Weike Jin, Xinyu Duan, Zhen Lei, Baoxing Huai, Yiling Wu, Xiaofei He
A Comprehensive Evaluation on Multi-channel Biometric Face Presentation Attack Detection
Anjith George, David Geissbuhler, Sebastien Marcel
Explaining Face Presentation Attack Detection Using Natural Language
Hengameh Mirzaalian, Mohamed E. Hussein, Leonidas Spinoulas, Jonathan May, Wael Abd-Almageed
Partial Attack Supervision and Regional Weighted Inference for Masked Face Presentation Attack Detection
Meiling Fang, Fadi Boutros, Arjan Kuijper, Naser Damer