Face Recognition Model
Face recognition models aim to automatically identify individuals from their facial images, with applications ranging from security systems to personalized services. Current research heavily focuses on mitigating biases (especially racial and age biases) through techniques like data augmentation with synthetic data generated by diffusion models and knowledge distillation, as well as improving robustness to real-world conditions such as occlusions, poor image quality, and the presence of face masks. These advancements are crucial for ensuring fairness, accuracy, and trustworthiness in face recognition systems, impacting both the scientific understanding of these models and their ethical deployment in various applications.
Papers
Watch Out for the Confusing Faces: Detecting Face Swapping with the Probability Distribution of Face Identification Models
Yuxuan Duan, Xuhong Zhang, Chuer Yu, Zonghui Wang, Shouling Ji, Wenzhi Chen
Controllable Inversion of Black-Box Face Recognition Models via Diffusion
Manuel Kansy, Anton Raël, Graziana Mignone, Jacek Naruniec, Christopher Schroers, Markus Gross, Romann M. Weber