软生物识别隐私:在干扰性别的同时保留面部图像的生物识别效用

Vahid Mirjalili, A. Ross
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引用次数: 67

摘要

虽然收集生物特征数据(如面部图像、虹膜、指纹等)的主要目的是为了识别人,但机器学习的最新进展表明,可以从生物特征数据(如年龄、性别、健康属性等)中提取辅助信息。这些辅助属性有时被称为软生物识别技术。这种软生物特征属性的自动提取可以在没有用户同意的情况下进行,从而引起了一些隐私问题。在这项工作中,我们设计了一种修改人脸图像的技术,使性别分类器评估的性别受到干扰,同时保留了人脸匹配器评估的生物识别效用。给定任意的生物特征匹配器和属性分类器,该方法对输入图像进行系统扰动,使属性分类器的输出受到干扰,而生物特征匹配器的输出没有受到显著影响。实验分析表明,该方案对人脸图像的性别隐私保护效果良好。
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Soft biometric privacy: Retaining biometric utility of face images while perturbing gender
While the primary purpose for collecting biometric data (such as face images, iris, fingerprints, etc.) is for person recognition, yet recent advances in machine learning has shown the possibility of extracting auxiliary information from biometric data such as age, gender, health attributes, etc. These auxiliary attributes are sometimes referred to as soft biometrics. This automatic extraction of soft biometric attributes can happen without the user's agreement, thereby raising several privacy concerns. In this work, we design a technique that modifies a face image such that its gender as assessed by a gender classifier is perturbed, while its biometric utility as assessed by a face matcher is retained. Given an arbitrary biometric matcher and an attribute classifier, the proposed method systematically perturbs the input image such that the output of the attribute classifier is confounded, while the output of the biometric matcher is not significantly impacted. Experimental analysis convey the efficacy of the scheme in imparting gender privacy to face images.
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