人脸识别中的性别隐私角度约束

Zohra Rezgui;Nicola Strisciuglio;Raymond Veldhuis
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引用次数: 0

摘要

基于深度学习的人脸识别系统产生的模板编码了身份旁边的敏感信息,如性别和种族。这就带来了法律和道德问题,因为生物识别数据的收集应尽量减少,并且只针对指定任务。我们提出了两个隐私约束条件,以隐藏可添加到识别损失中的性别属性。第一个约束依赖于性别中心点嵌入之间角度的最小化。第二个约束依赖于特定性别嵌入向量与对立的性别中心点权重向量之间角度的最小化。这两个约束条件都强制要求嵌入式的特定性别分布重叠。此外,它们在嵌入空间中有着直接的解释,而且不需要大量的可训练参数,因为两个全连接层就足以取得令人满意的结果。我们还提供了多个数据集和人脸识别网络的广泛评估结果,并将我们的方法与三种最先进的方法进行了比较。我们的方法能够在跨数据库环境中保持较高的验证性能,同时显著提高隐私性,而且不会增加模板比较的计算负荷。我们还表明,不同的训练数据会导致实现数据最小化的隐私增强方法产生不同程度的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gender Privacy Angular Constraints for Face Recognition
Deep learning-based face recognition systems produce templates that encode sensitive information next to identity, such as gender and ethnicity. This poses legal and ethical problems as the collection of biometric data should be minimized and only specific to a designated task. We propose two privacy constraints to hide the gender attribute that can be added to a recognition loss. The first constraint relies on the minimization of the angle between gender-centroid embeddings. The second constraint relies on the minimization of the angle between gender specific embeddings and their opposing gender-centroid weight vectors. Both constraints enforce the overlapping of the gender specific distributions of the embeddings. Furthermore, they have a direct interpretation in the embedding space and do not require a large number of trainable parameters as two fully connected layers are sufficient to achieve satisfactory results. We also provide extensive evaluation results across several datasets and face recognition networks, and we compare our method to three state-of-the-art methods. Our method is capable of maintaining high verification performances while significantly improving privacy in a cross-database setting, without increasing the computational load for template comparison. We also show that different training data can result in varying levels of effectiveness of privacy-enhancing methods that implement data minimization.
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CiteScore
10.90
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