Facial Attribute
Facial attribute research focuses on automatically identifying and manipulating various characteristics from facial images, aiming for accurate and unbiased classification and generation. Current research emphasizes mitigating biases in algorithms, particularly concerning demographic attributes, using techniques like fine-grained feature analysis, self-supervised learning, and disentangled generative models (e.g., StyleGAN, diffusion models). This field is crucial for improving fairness in facial recognition systems and enabling applications such as personalized user experiences, medical diagnosis (e.g., detecting neurodevelopmental disorders), and enhanced image editing and generation.
Papers
Foundation Cures Personalization: Recovering Facial Personalized Models' Prompt Consistency
Yiyang Cai, Zhengkai Jiang, Yulong Liu, Chunyang Jiang, Wei Xue, Wenhan Luo, Yike Guo
Facial Features Matter: a Dynamic Watermark based Proactive Deepfake Detection Approach
Shulin Lan, Kanlin Liu, Yazhou Zhao, Chen Yang, Yingchao Wang, Xingshan Yao, Liehuang Zhu