In a recent publication in Science China Life Sciences, the research led by Professor Jing-Dong Jackie Han and PhD student Xinyu Yang from Peking University established a deep learning model for age estimation using non-registered 3D face point clouds. They also proposed the coordinate-wise monotonic transformations algorithm to isolate age-related facial features from identifiable human faces.
The team trained the model on over 16,000 instances of 3D face point cloud data, achieving an average absolute error of about 2.5 years. The model recognizes the rotational invariance of human faces. In their analysis of face shape and skin tone’s importance, they developed the coordinate-wise monotonic transformations algorithm. The algorithm can distort faces without changing the relative positions of facial elements. The team found that the deep learning models could accurately and consistently estimate ages with faces before and after applying the transformation algorithm in various scenarios, demonstrating that the transformations effectively preserve age-related facial features. However, in visual tests, subjects experienced a notable decrease in accuracy and response speed when assessing transformed faces. Additionally, computational face verification models trained on normal face shapes failed to recognize transformed faces.
Considering the similarities and differences in age estimation and identification tasks, the research team proposed a facial data protection guideline. This guideline, featuring coordinate-wise monotonic transformations and selective data provisioning, aims to provide a theoretical foundation for managing facial data centers or public datasets.
See the article:
Coordinate-Wise Monotonic Transformations Enable Privacy-Preserving Age Estimation with 3D Face Point Cloud
Journal
Science China Life Sciences