用于Web客户端的轻量级设备类指纹识别

Elie Bursztein, Artem Malyshev, Tadek Pietraszek, Kurt Thomas
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引用次数: 39

摘要

在这项工作中,我们提出了Picasso:一个轻量级的设备类指纹协议,允许服务器验证移动或桌面客户端的软件和硬件堆栈。例如,Picasso可以区分在iOS上运行Safari的正版iPhone发送的流量与模拟器或欺骗相同配置的桌面客户端。当渲染HTML5画布时,我们的指纹识别方案建立在客户端浏览器、操作系统和图形堆栈引入的不可预测但稳定的噪声上。我们的算法可以抵抗重放,并且包括一个硬件绑定的工作量证明,它迫使客户端花费可配置的CPU和内存来解决挑战。我们证明了Picasso可以100%准确地区分5200万个运行各种浏览器的Android、iOS、Windows和OSX客户端。我们讨论了Picasso在打击滥用中的应用,包括保护Play Store或其他移动应用市场免受无机互动的影响;或者识别从以前未见过的设备类登录用户帐户的尝试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Picasso: Lightweight Device Class Fingerprinting for Web Clients
In this work we present Picasso: a lightweight device class fingerprinting protocol that allows a server to verify the software and hardware stack of a mobile or desktop client. As an example, Picasso can distinguish between traffic sent by an authentic iPhone running Safari on iOS from an emulator or desktop client spoofing the same configuration. Our fingerprinting scheme builds on unpredictable yet stable noise introduced by a client's browser, operating system, and graphical stack when rendering HTML5 canvases. Our algorithm is resistant to replay and includes a hardware-bound proof of work that forces a client to expend a configurable amount of CPU and memory to solve challenges. We demonstrate that Picasso can distinguish 52 million Android, iOS, Windows, and OSX clients running a diversity of browsers with 100% accuracy. We discuss applications of Picasso in abuse fighting, including protecting the Play Store or other mobile app marketplaces from inorganic interactions; or identifying login attempts to user accounts from previously unseen device classes.
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