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Secure Face Matching Using Fully Homomorphic Encryption

机译:使用完全同态加密的安全人脸匹配

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摘要

Face recognition technology has demonstrated tremendous progress over the past few years, primarily due to advances in representation learning. As we witness the widespread adoption of these systems, it is imperative to consider the security of face representations. In this pa per, we explore the practicality of using a fully homomorphic encryption based framework to secure a database of face templates. This framework is designed to preserve the privacy of users and prevent information leakage from the templates, while maintaining their utility through tem plate matching directly in the encrypted domain. Additionally, we also explore a batching and dimensionality reduction scheme to trade-off face matching accuracy and computational complexity. Experiments on benchmark face datasets (LFW, IJB-A, IJB-B, CASIA) indicate that secure face matching can be practically feasible (16KB template size and 0.01 sec per match pair for 512-dimensional features from SphereFace [23]) while exhibiting minimal loss in matching performance.
机译:在过去的几年中,面部识别技术已经显示出巨大的进步,这主要归功于表示学习的进步。当我们目睹这些系统被广泛采用时,必须考虑面部表示的安全性。在本文中,我们探讨了使用基于完全同态加密的框架来保护人脸模板数据库的实用性。该框架旨在保护用户的隐私并防止信息从模板泄漏,同时通过直接在加密域中进行模板匹配来保持其效用。此外,我们还探索了一种批处理和降维方案,以权衡人脸匹配的准确性和计算复杂性。在基准人脸数据集(LFW,IJB-A,IJB-B,CASIA)上进行的实验表明,安全人脸匹配实际上是可行的(SphereFace [23]的512维特征的16KB模板大小和每个匹配对0.01秒)匹配性能的损失最小。

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