Facial Data
Facial data analysis is a rapidly evolving field focused on extracting meaningful information from images and videos of faces, aiming to improve applications ranging from medical diagnosis to security systems. Current research emphasizes developing robust and fair algorithms, often employing deep learning models like GANs and diffusion models, to address challenges such as data bias, privacy concerns, and the need for accurate 3D facial reconstruction from limited or noisy data. These advancements have significant implications for various fields, including healthcare (diagnosing genetic disorders and mental health conditions), security (improving face recognition systems), and computer graphics (creating realistic synthetic faces).
Papers
Facial Data Minimization: Shallow Model as Your Privacy Filter
Yuwen Pu, Jiahao Chen, Jiayu Pan, Hao li, Diqun Yan, Xuhong Zhang, Shouling Ji
Segue: Side-information Guided Generative Unlearnable Examples for Facial Privacy Protection in Real World
Zhiling Zhang, Jie Zhang, Kui Zhang, Wenbo Zhou, Weiming Zhang, Nenghai Yu