Face recognition is a widely accepted biometric verification tool, as the face contains a lot of information about the identity of a person. In this study, a 2-step neural-based pipeline is presented for matching 3D facial shape to multiple DNA-related properties (sex, age, BMI and genomic background). The first step consists of a triplet loss-based metric learner that compresses facial shape into a lower dimensional embedding while preserving information about the property of interest. Most studies in the field of metric learning have only focused on 2D Euclidean data. In this work, geometric deep learning is employed to learn directly from 3D facial meshes. To this end, spiral convolutions are used along with a novel mesh-sampling scheme that retains uniformly sampled 3D points at different levels of resolution. The second step is a multi-biometric fusion by a fully connected neural network. The network takes an ensemble of embeddings and property labels as input and returns genuine and imposter scores. Since embeddings are accepted as an input, there is no need to train classifiers for the different properties and available data can be used more efficiently. Results obtained by a 10-fold cross-validation for biometric verification show that combining multiple properties leads to stronger biometric systems. Furthermore, the proposed neural-based pipeline outperforms a linear baseline, which consists of principal component analysis, followed by classification with linear support vector machines and a Naive Bayes-based score-fuser.
翻译:面部识别是一种广泛接受的生物鉴别识别工具, 因为脸部包含大量关于一个人身份的信息。 在这项研究中, 展示了一个基于 2 步神经的管道, 将 3D 面部形状与多个DNA相关属性( 性别、 年龄、 BMI 和 基因组背景) 相匹配 。 第一步由三进制损失基础的测试仪构成, 将面部形状压缩成一个低维嵌入, 同时保存有关属性的信息 。 光学学习领域的多数研究仅侧重于 2D Euclidean 数据 。 在这项工作中, 使用几进制深度的深度学习直接从 3D 面部线性介质中学习 。 为此, 螺旋变动与新颖的网格抽样方案一起使用, 在不同分辨率上保留统一抽样的 3D点。 第二步是由一个完全相连的神经网络将面部嵌入的面形和属性标签作为输入并返回真实和假的分数。 由于嵌入系统被接受为输入, 3D 直径直径 直径直径直径直径的学习器直接学习器直接学习 。, 因此, 需要将一个更精细的直径的直径分析系统合并一个用于不同的直径分析 。 。 演示的直径分析系统 。