A Novel Face-Anti Spoofing Neural Network Model For Face Recognition And Detection
This addresses security vulnerabilities in face recognition applications like banking and road crossings, but appears incremental as it builds on existing anti-spoofing methods.
The paper tackles the problem of face spoofing attacks in face recognition systems by proposing a neural network model for face anti-spoofing, achieving an efficiency of 0.89 percent.
Face Recognition (FR) systems are being used in a variety of applications, including road crossings, banking, and mobile banking. The widespread use of FR systems has raised concerns about the safety of face biometrics against spoofing attacks, which use the use of a photo or video of a legitimate user's face to gain illegal access to the resources or activities. Despite the development of several FAS or liveness detection methods (which determine whether a face is live or spoofed at the time of acquisition), the problem remains unsolved due to the difficulty of identifying discrimination and operationally reasonably priced spoof characteristics but also approaches. Additionally, certain facial portions are frequently repeated or correlate to image clutter, resulting in poor performance overall. This research proposes a face-anti-spoofing neural network model that outperforms existing models and has an efficiency of 0.89 percent.