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Entering Watch Dogs*: Evaluating Privacy Risks Against Large-Scale Facial Search and Data Collection

机译:进入手表狗*:对大规模面部搜索和数据收集评估隐私风险

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Discovering friends on online platforms have become relatively easier with the introduction of contact discovery and ability to search using phone numbers. Such features conveniently connect users by acting as unique tokens across platforms, as opposed to other attributes, such as user names. Using this feature, in this work, one of our contributions is to explore how an attacker can easily create a massive dataset of individuals residing in a given region (e.g., country) that includes high amount of personal information about such individuals. To identify the active social network accounts of individuals in a given region, we show that brute force phone number verification is possible in popular online services, such as WhatsApp, Facebook Messenger, and Twitter. We also go beyond and show the feasibility of collecting several data points on discovered accounts, including multiple facial data belonging to each account owner along with 23 other attributes. Then, as our main contribution, we quantify the privacy risk for an attacker linking a total stranger (e.g., someone it randomly comes across in public) to one of the collected records via facial features. Our results show that accurate facial search is possible in the constructed dataset and that an attacker can link a randomly taken photo (i.e., a single facial photo) of an individual to their profile with 67% accuracy. This means that an attacker can, on a large scale, create a search engine that is capable of identifying individuals’ records efficiently and accurately from just a single facial photo.
机译:通过引入联系人发现和使用电话号码搜索的能力,在网上平台上发现朋友已经变得相对较强。这些功能方便地通过在跨平台上作为唯一的令牌来连接用户,而不是其他属性,例如用户名。在这项工作中,在这项工作中,我们的贡献之一是探讨攻击者如何轻松创建驻留在给定区域(例如,国家)中的大量数据集,其中包括关于此类个人的高量个人信息。为了确定特定区域中个人的活动社交网络账户,我们展示了在流行的在线服务中可以进行蛮力电话号码验证,例如WhatsApp,Facebook Messenger和Twitter。我们还超越并显示了在发现的帐户上收集多个数据点的可行性,包括属于每个帐户所有者的多个面部数据以及23个其他属性。然后,作为我们的主要贡献,我们量化了将陌生人联系的攻击者的隐私风险(例如,它在公共场合随机地跨越)到其中一个收集的记录。我们的结果表明,在构造的数据集中,可以在构造的数据集中进行准确的面部搜索,并且攻击者可以将个人的随机拍摄的照片(即单个面部照片)链接到其轮廓,精度为67%。这意味着攻击者可以大规模创建一个搜索引擎,该搜索引擎能够从单个面部照片有效且准确地识别个人的记录。

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