超越身份:生物识别面部模板中存储了什么信息?

P. Terhorst, Daniel Fahrmann, N. Damer, Florian Kirchbuchner, Arjan Kuijper
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引用次数: 22

摘要

深度学习的人脸表征使当前人脸识别系统取得成功。尽管这些表征能够编码个人的身份,但最近的研究表明,更多的信息存储在其中,如人口统计、图像特征和社会特征。这威胁到用户的隐私,因为对于许多应用程序,这些模板被期望仅用于识别目的。了解人脸模板中的编码信息有助于开发减轻偏见和保护隐私的人脸识别技术。这项工作旨在通过分析113个属性的面部模板来支持这两个分支的发展。实验是在两个公开的人脸嵌入上进行的。为了评估属性的可预测性,我们训练了一个大规模的属性分类器,该分类器还能够准确地说明其预测置信度。这允许我们对属性的可预测性做出更复杂的陈述。结果表明,从人脸模板中可以准确预测多达74个属性。尤其是非永久性属性,如年龄、发型、发色、胡须和各种配饰,这些都很容易预测。由于人脸识别系统的目标是对这些变化具有鲁棒性,未来的研究可能会建立在这项工作的基础上,以开发更容易理解的隐私保护解决方案,并构建鲁棒和公平的人脸模板。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond Identity: What Information Is Stored in Biometric Face Templates?
Deeply-learned face representations enable the success of current face recognition systems. Despite the ability of these representations to encode the identity of an individual, recent works have shown that more information is stored within, such as demographics, image characteristics, and social traits. This threatens the user's privacy, since for many applications these templates are expected to be solely used for recognition purposes. Knowing the encoded information in face templates helps to develop bias-mitigating and privacy-preserving face recognition technologies. This work aims to support the development of these two branches by analysing face templates regarding 113 attributes. Experiments were conducted on two publicly available face embeddings. For evaluating the predictability of the attributes, we trained a massive attribute classifier that is additionally able to accurately state its prediction confidence. This allows us to make more sophisticated statements about the attribute predictability. The results demonstrate that up to 74 attributes can be accurately predicted from face templates. Especially non-permanent attributes, such as age, hairstyles, haircolors, beards, and various accessories, found to be easily-predictable. Since face recognition systems aim to be robust against these variations, future research might build on this work to develop more understandable privacy preserving solutions and build robust and fair face templates.
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