Abstract:
Face recognition systems that are commonly used in access control settings are vulnerable to presentation attacks, which pose a significant security risk. Therefore, it i...Show MoreMetadata
Abstract:
Face recognition systems that are commonly used in access control settings are vulnerable to presentation attacks, which pose a significant security risk. Therefore, it is crucial to develop a robust and reliable face presentation attack detection system that can automatically detect these types of attacks. In this paper, we present a novel technique called Point Cloud Graph Attention Network (PCGattnNet) to detect face presentation attacks using 3D point clouds captured from a smartphone. The innovative nature of the proposed technique lies in its ability to dynamically represent point clouds as graphs that effectively capture discriminant information, thereby facilitating the detection of robust presentation attacks. To evaluate the efficacy of the proposed method effectively, we introduced newly collected 3D face point clouds using two different smartphones. The newly collected dataset comprised bona fide samples from 100 unique data subjects and six different 3D face presentation attack instruments. Extensive experiments were conducted to evaluate the generalizability of the proposed and existing methods to unknown attack instruments. The outcomes of these experiments demonstrate the reliability of the proposed method for detecting unknown attack instruments.
Published in: IEEE Transactions on Biometrics, Behavior, and Identity Science ( Early Access )
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- IEEE Keywords
- Index Terms
- Point Cloud ,
- 3D Point ,
- 3D Point Cloud ,
- Attack Detection ,
- Dynamic Graph ,
- Graph Attention ,
- Presentation Attack ,
- Presentation Attack Detection ,
- Face Presentation Attack ,
- Face Presentation Attack Detection ,
- Data Subject ,
- Face Recognition ,
- Access Control ,
- Types Of Attacks ,
- Graph Attention Network ,
- 3D Face ,
- Performance Of Method ,
- Convolutional Layers ,
- Detection Performance ,
- K-nearest Neighbor ,
- Face Masks ,
- Multi-head Self-attention ,
- Performance Degradation ,
- Smartphone Camera ,
- Spatial Attention ,
- Scale-invariant Feature Transform ,
- True Depth ,
- Multiple Sessions ,
- Self-attention Layer ,
- Capture Device
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Point Cloud ,
- 3D Point ,
- 3D Point Cloud ,
- Attack Detection ,
- Dynamic Graph ,
- Graph Attention ,
- Presentation Attack ,
- Presentation Attack Detection ,
- Face Presentation Attack ,
- Face Presentation Attack Detection ,
- Data Subject ,
- Face Recognition ,
- Access Control ,
- Types Of Attacks ,
- Graph Attention Network ,
- 3D Face ,
- Performance Of Method ,
- Convolutional Layers ,
- Detection Performance ,
- K-nearest Neighbor ,
- Face Masks ,
- Multi-head Self-attention ,
- Performance Degradation ,
- Smartphone Camera ,
- Spatial Attention ,
- Scale-invariant Feature Transform ,
- True Depth ,
- Multiple Sessions ,
- Self-attention Layer ,
- Capture Device
- Author Keywords