一个开发人员友好的智能家居物联网隐私保护流量混淆库

T. Datta, Noah J. Apthorpe, N. Feamster
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引用次数: 37

摘要

在过去的几年里,联网设备的数量和种类都有了巨大的增长,对安全和隐私提出了新的挑战。研究表明,网络攻击者可以使用来自消费者物联网设备的流量速率元数据来推断敏感的用户活动。塑造流量流以适应独立于用户活动的发行版可以保护隐私,但由于需要开发人员的努力和额外的带宽成本,这种方法很少被采用。在这里,我们为物联网开发人员提供了一个Python库,可以轻松地将保护隐私的流量整形集成到他们的产品中。该库将标准的网络功能替换为通过有效负载填充、碎片和随机覆盖流量的组合自动混淆设备流量模式的版本。我们的库成功地保护了用户隐私,并且对于具有低发送速率或高延迟容限的物联网设备需要大约4 KB/s的开销带宽。考虑到美国家庭的正常网速,这种开销是合理的,而且是对现有解决方案带宽要求的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Developer-Friendly Library for Smart Home IoT Privacy-Preserving Traffic Obfuscation
The number and variety of Internet-connected devices have grown enormously in the past few years, presenting new challenges to security and privacy. Research has shown that network adversaries can use traffic rate metadata from consumer IoT devices to infer sensitive user activities. Shaping traffic flows to fit distributions independent of user activities can protect privacy, but this approach has seen little adoption due to required developer effort and overhead bandwidth costs. Here, we present a Python library for IoT developers to easily integrate privacy-preserving traffic shaping into their products. The library replaces standard networking functions with versions that automatically obfuscate device traffic patterns through a combination of payload padding, fragmentation, and randomized cover traffic. Our library successfully preserves user privacy and requires approximately 4 KB/s overhead bandwidth for IoT devices with low send rates or high latency tolerances. This overhead is reasonable given normal Internet speeds in American homes and is an improvement on the bandwidth requirements of existing solutions.
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