All your face are belong to us: breaking Facebook's social authentication

Iasonas Polakis, M. Lancini, Georgios Kontaxis, F. Maggi, S. Ioannidis, A. Keromytis, S. Zanero
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引用次数: 49

Abstract

Two-factor authentication is widely used by high-value services to prevent adversaries from compromising accounts using stolen credentials. Facebook has recently released a two-factor authentication mechanism, referred to as Social Authentication, which requires users to identify some of their friends in randomly selected photos. A recent study has provided a formal analysis of social authentication weaknesses against attackers inside the victim's social circles. In this paper, we extend the threat model and study the attack surface of social authentication in practice, and show how any attacker can obtain the information needed to solve the challenges presented by Facebook. We implement a proof-of-concept system that utilizes widely available face recognition software and cloud services, and evaluate it using real public data collected from Facebook. Under the assumptions of Facebook's threat model, our results show that an attacker can obtain access to (sensitive) information for at least 42% of a user's friends that Facebook uses to generate social authentication challenges. By relying solely on publicly accessible information, a casual attacker can solve 22% of the social authentication tests in an automated fashion, and gain a significant advantage for an additional 56% of the tests, as opposed to just guessing. Additionally, we simulate the scenario of a determined attacker placing himself inside the victim's social circle by employing dummy accounts. In this case, the accuracy of our attack greatly increases and reaches 100% when 120 faces per friend are accessible by the attacker, even though it is very accurate with as little as 10 faces.
你所有的脸都属于我们:打破Facebook的社交认证
双因素身份验证在高价值服务中广泛使用,以防止攻击者使用被盗凭据破坏帐户。Facebook最近发布了一种双因素认证机制,称为社交认证,该机制要求用户在随机选择的照片中识别他们的一些朋友。最近的一项研究提供了针对受害者社交圈内攻击者的社会身份验证弱点的正式分析。在本文中,我们扩展了威胁模型,并在实践中研究了社交认证的攻击面,并展示了任何攻击者如何获得解决Facebook所带来的挑战所需的信息。我们实现了一个概念验证系统,该系统利用广泛可用的面部识别软件和云服务,并使用从Facebook收集的真实公共数据对其进行评估。在Facebook威胁模型的假设下,我们的结果表明,攻击者可以获得至少42%的用户朋友的(敏感)信息,Facebook使用这些信息来生成社交身份验证挑战。通过仅依赖于可公开访问的信息,随机攻击者可以以自动化的方式解决22%的社会身份验证测试,并在另外56%的测试中获得明显的优势,而不是仅仅猜测。此外,我们通过使用虚拟帐户模拟了一个有决心的攻击者将自己置于受害者的社交圈中的场景。在这种情况下,我们的攻击准确率大大提高,当攻击者可以接触到每个朋友120张脸时,我们的攻击准确率达到100%,即使只有10张脸也非常准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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