Suppressing Gender and Age in Face Templates Using Incremental Variable Elimination

Philipp Terhörst, N. Damer, Florian Kirchbuchner, Arjan Kuijper
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引用次数: 28

Abstract

Recent research on soft-biometrics showed that more information than just the person’s identity can be deduced from biometric data. Using face templates only, information about gender, age, ethnicity, health state of the person, and even the sexual orientation can be automatically obtained. Since for most applications these templates are expected to be used for recognition purposes only, this raises major privacy issues. Previous work addressed this problem purely on image level regarding function creep attackers without knowledge about the systems privacy mechanism. In this work, we propose a soft-biometric privacy enhancing approach that reduces a given biometric template by eliminating its most important variables for predicting soft-biometric attributes. Training a decision tree ensemble allows deriving a variable importance measure that is used to incrementally eliminate variables that allow predicting sensitive attributes. Unlike previous work, we consider a scenario of function creep attackers with explicit knowledge about the privacy mechanism and evaluated our approach on a publicly available database. The experiments were conducted to eight baseline solutions. The results showed that in many cases IVE is able to suppress gender and age to a high degree with a negligible loss of the templates recognition ability. Contrary to previous work, which is limited to the suppression of binary (gender) attributes, IVE is able, by design, to suppress binary, categorical, and continuous attributes.
用增量变量消除法抑制人脸模板中的性别和年龄
最近对软生物识别技术的研究表明,从生物识别数据中可以推断出除了个人身份之外的更多信息。仅使用面部模板,就可以自动获得有关人的性别、年龄、种族、健康状况甚至性取向的信息。由于对于大多数应用程序来说,这些模板预计仅用于识别目的,因此这引起了主要的隐私问题。以前的工作纯粹是在图像级别上解决这个问题,涉及功能蠕变攻击者,而不了解系统的隐私机制。在这项工作中,我们提出了一种软生物特征隐私增强方法,通过消除预测软生物特征属性的最重要变量来减少给定的生物特征模板。训练决策树集合允许派生一个变量重要性度量,该度量用于增量地消除允许预测敏感属性的变量。与之前的工作不同,我们考虑了一个功能蠕变攻击者的场景,他们对隐私机制有明确的了解,并在一个公开可用的数据库上评估了我们的方法。实验针对8种基准溶液进行。结果表明,在许多情况下,IVE能够高度抑制性别和年龄,而模板识别能力的损失可以忽略不计。与以往的工作相反,它仅限于抑制二元(性别)属性,IVE能够,通过设计,抑制二元,分类和连续属性。
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