In some face recognition applications, we are interested to verify whether an individual is a member of a group, without revealing their identity. Some existing methods, propose a mechanism for quantizing precomputed face descriptors into discrete embeddings and aggregating them into one group representation. However, this mechanism is only optimized for a given closed set of individuals and needs to learn the group representations from scratch every time the groups are changed. In this paper, we propose a deep architecture that jointly learns face descriptors and the aggregation mechanism for better end-to-end performances. The system can be applied to new groups with individuals never seen before and the scheme easily manages new memberships or membership endings. We show through experiments on multiple large-scale wild-face datasets, that the proposed method leads to higher verification performance compared to other baselines.
翻译:在一些面对面的识别应用程序中,我们有兴趣核实一个人是否属于一个团体的成员,但不透露其身份。一些现有方法,建议一种机制,对预先计算过的面条说明进行量化,将其分解成分立的嵌入体,并将其合并成一个团体代表。然而,这一机制只对特定一组封闭的个人最优化,需要在每个团体改变时从零开始学习团体的表述。在本文件中,我们提议了一个深厚的结构,共同学习面条说明和汇总机制,以更好地进行端到端的绩效。这个系统可以适用于新团体,这些新团体有从未见过的个人,而且这个机制很容易管理新的成员或成员结束。我们通过对多个大型野面数据集的实验显示,拟议方法导致比其他基线更高的核查性能。