Face Embeddings
Face embeddings are numerical representations of facial images, aiming to capture identity and other facial attributes for tasks like recognition, verification, and analysis. Current research focuses on improving embedding robustness and accuracy across diverse conditions (e.g., varying lighting, pose, and image quality), often employing deep learning models like transformers and diffusion models, and exploring probabilistic approaches for uncertainty estimation. This field is crucial for advancing applications such as forensic science, security systems, and healthcare monitoring, while also raising important ethical considerations regarding bias and privacy in facial recognition technologies.
Papers
Addressing Bias in Face Detectors using Decentralised Data collection with incentives
M. R. Ahan, Robin Lehmann, Richard Blythman
Facial Action Unit Detection and Intensity Estimation from Self-supervised Representation
Bowen Ma, Rudong An, Wei Zhang, Yu Ding, Zeng Zhao, Rongsheng Zhang, Tangjie Lv, Changjie Fan, Zhipeng Hu