Matching 3D Facial Shape to Demographic Properties by Geometric Metric Learning: A Part-Based Approach

IEEE Trans Biom Behav Identity Sci. 2022 Apr;4(2):163-172. doi: 10.1109/tbiom.2021.3092564. Epub 2021 Jun 29.

Abstract

Face recognition is a widely accepted biometric identifier, as the face contains a lot of information about the identity of a person. The goal of this study is to match the 3D face of an individual to a set of demographic properties (sex, age, BMI, and genomic background) that are extracted from unidentified genetic material. We introduce a triplet loss metric learner that compresses facial shape into a lower dimensional embedding while preserving information about the property of interest. The metric learner is trained for multiple facial segments to allow a global-to-local part-based analysis of the face. To learn directly from 3D mesh data, spiral convolutions are used along with a novel mesh-sampling scheme, which retains uniformly sampled points at different resolutions. The capacity of the model for establishing identity from facial shape against a list of probe demographics is evaluated by enrolling the embeddings for all properties into a support vector machine classifier or regressor and then combining them using a naive Bayes score fuser. Results obtained by a 10-fold cross-validation for biometric verification and identification show that part-based learning significantly improves the systems performance for both encoding with our geometric metric learner or with principal component analysis.

Keywords: Deep Metric Learning; Face to DNA; Geometric Deep Learning; Multi Biometrics; Soft Biometrics.