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Secure and Privacy-Preserving Body Sensor Data Collection and Query Scheme

机译:安全和隐私保护的人体传感器数据收集和查询方案

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摘要

With the development of body sensor networks and the pervasiveness of smart phones, different types of personal data can be collected in real time by body sensors, and the potential value of massive personal data has attracted considerable interest recently. However, the privacy issues of sensitive personal data are still challenging today. Aiming at these challenges, in this paper, we focus on the threats from telemetry interface and present a secure and privacy-preserving body sensor data collection and query scheme, named SPCQ, for outsourced computing. In the proposed SPCQ scheme, users’ personal information is collected by body sensors in different types and converted into multi-dimension data, and each dimension is converted into the form of a number and uploaded to the cloud server, which provides a secure, efficient and accurate data query service, while the privacy of sensitive personal information and users’ query data is guaranteed. Specifically, based on an improved homomorphic encryption technology over composite order group, we propose a special weighted Euclidean distance contrast algorithm (WEDC) for multi-dimension vectors over encrypted data. With the SPCQ scheme, the confidentiality of sensitive personal data, the privacy of data users’ queries and accurate query service can be achieved in the cloud server. Detailed analysis shows that SPCQ can resist various security threats from telemetry interface. In addition, we also implement SPCQ on an embedded device, smart phone and laptop with a real medical database, and extensive simulation results demonstrate that our proposed SPCQ scheme is highly efficient in terms of computation and communication costs.
机译:随着人体传感器网络的发展和智能电话的普及,人体传感器可以实时收集不同类型的个人数据,海量个人数据的潜在价值近来引起了人们的极大兴趣。但是,今天,敏感个人数据的隐私问题仍然充满挑战。针对这些挑战,在本文中,我们将重点放在遥测接口的威胁上,并提出一种用于外包计算的安全且隐私保护的人体传感器数据收集和查询方案,称为SPCQ。在提出的SPCQ方案中,用户的个人信息由不同类型的人体传感器收集并转换为多维数据,每个维度都转换为数字形式并上传到云服务器,从而提供安全,高效的服务。准确的数据查询服务,同时确保敏感个人信息和用户查询数据的隐私性。具体而言,基于复合阶组上改进的同态加密技术,我们针对加密数据上的多维矢量提出了一种特殊的加权欧几里德距离对比算法(WEDC)。通过SPCQ方案,可以在云服务器中实现敏感个人数据的机密性,数据用户查询的私密性和准确的查询服务。详细分析表明,SPCQ可以抵御遥测接口的各种安全威胁。此外,我们还在具有真实医学数据库的嵌入式设备,智能手机和笔记本电脑上实现了SPCQ,广泛的仿真结果表明,我们提出的SPCQ方案在计算和通信成本方面非常高效。

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