Anti Spoofing
Anti-spoofing research aims to develop robust systems that can reliably distinguish genuine biometric data (e.g., faces, voices, fingerprints) from sophisticated spoof attempts. Current efforts concentrate on improving the generalization capabilities of anti-spoofing models across diverse datasets and unseen attack types, employing techniques like diffusion models, ensemble methods, and transfer learning with architectures such as ResNets, Vision Transformers, and Conformers. This field is crucial for securing biometric authentication systems in various applications, ranging from access control and financial transactions to identity verification, by mitigating the risks associated with presentation attacks.
Papers
SZU-AFS Antispoofing System for the ASVspoof 5 Challenge
Yuxiong Xu, Jiafeng Zhong, Sengui Zheng, Zefeng Liu, Bin Li
A Unified Framework for Iris Anti-Spoofing: Introducing IrisGeneral Dataset and Masked-MoE Method
Hang Zou, Chenxi Du, Ajian Liu, Yuan Zhang, Jing Liu, Mingchuan Yang, Jun Wan, Hui Zhang