使用enclave的隐私保护定位

Arslan Khan, Joseph I. Choi, D. Tian, Tyler Ward, Kevin R. B. Butler, Patrick Traynor, J. Shea, T. Wong
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引用次数: 0

摘要

定位是协同频谱感知的一种形式,它允许多个传感器一起工作来估计目标发射机的位置。然而,必要的频谱测量交换导致参与传感器的物理位置暴露。此外,在某些情况下,一个受损的参与者可以揭示所有参与者的敏感特征。因此,缺乏对数据处理的充分保证阻碍了这些设备一起工作。在本文中,我们通过在可证明的容器或飞地内处理频谱测量来提供缺失的数据保护。enclave使用硬件扩展提供运行时内存完整性和机密性,并已用于保护各种应用程序[1]-[8]。我们使用这些enclave特征作为新的隐私保护粒子滤波协议的构建块,以最大限度地减少对频谱传感生态系统的破坏。然后,我们使用ARM TrustZone和Intel SGX实例化了这个enclave,我们证明了基于enclave的粒子滤波协议会产生最小的开销(使用SGX与不受保护的计算相比,在测量处理函数中增加16毫秒的处理时间),并且可以部署在支持TrustZone的资源受限平台上(当粒子计数从10,000增加到20,000时,处理时间仅增加1.01倍)。而基于密码学的方法的成本要高出多个数量级。我们在分布式环境中有效地部署了enclave,极大地改进了当前的数据处理技术。据我们所知,这是第一个在合理开销的多方环境中演示隐私保护本地化的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy-Preserving Localization using Enclaves
Localization is one form of cooperative spectrum sensing that lets multiple sensors work together to estimate the location of a target transmitter. However, the requisite exchange of spectrum measurements leads to exposure of the physical location of participating sensors. Furthermore, in some cases, a compromised participant can reveal the sensitive characteristics of all participants. Accordingly, a lack of sufficient guarantees about data handling discourages such devices from working together. In this paper, we provide the missing data protections by processing spectrum measurements within attestable containers or enclaves. Enclaves provide runtime memory integrity and confidentiality using hardware extensions and have been used to secure various applications [1]–[8]. We use these enclave features as building blocks for new privacy-preserving particle filter protocols that minimize disruption of the spectrum sensing ecosystem. We then instantiate this enclave using ARM TrustZone and Intel SGX, and we show that enclave-based particle filter protocols incur minimal overhead (adding 16 milliseconds of processing to the measurement processing function when using SGX versus unprotected computation) and can be deployed on resource-constrained platforms that support TrustZone (incurring only a 1.01x increase in processing time when doubling particle count from 10,000 to 20,000), whereas cryptographically-based approaches suffer from multiple orders of magnitude higher costs. We effectively deploy enclaves in a distributed environment, dramatically improving current data handling techniques. To our best knowledge, this is the first work to demonstrate privacy-preserving localization in a multi-party environment with reasonable overhead.
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