Optimizing Distributed Face Recognition Systems through Efficient Aggregation of Facial Embeddings

Philipp Hofer, Michael Roland, R. Mayrhofer, Philipp Schwarz
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引用次数: 1

Abstract

Biometrics are one of the most privacy-sensitive data. Ubiquitous authentication systems with a focus on privacy favor decentralized approaches as they reduce potential attack vectors, both on a technical and organizational level. The gold standard is to let the user be in control of where their own data is stored, which consequently leads to a high variety of devices used. Moreover, in comparison with a centralized system, designs with higher end-user freedom often incur additional network overhead. Therefore, when using face recognition for biometric authentication, an efficient way to compare faces is important in practical deployments, because it reduces both network and hardware requirements that are essential to encourage device diversity. This paper proposes an efficient way to aggregate embeddings used for face recognition based on an extensive analysis on different datasets and the use of different aggregation strategies. As part of this analysis, a new dataset has been collected, which is available for research purposes. Our proposed method supports the construction of massively scalable, decentralized face recognition systems with a focus on both privacy and long-term usability.
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通过有效的面部嵌入聚合优化分布式人脸识别系统
生物特征是最敏感的隐私数据之一。关注隐私的无处不在的身份验证系统倾向于分散的方法,因为它们在技术和组织层面上减少了潜在的攻击向量。黄金标准是让用户控制自己的数据存储位置,这导致使用的设备种类繁多。此外,与集中式系统相比,具有更高最终用户自由度的设计通常会产生额外的网络开销。因此,在使用人脸识别进行生物识别身份验证时,在实际部署中,一种有效的方法来比较人脸是很重要的,因为它减少了对网络和硬件的需求,而这是鼓励设备多样性所必需的。基于对不同数据集的广泛分析和不同聚合策略的使用,本文提出了一种有效的人脸识别嵌入聚合方法。作为分析的一部分,收集了一个新的数据集,可用于研究目的。我们提出的方法支持大规模可扩展、分散的人脸识别系统的构建,同时关注隐私和长期可用性。
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