拥挤感测
计算机科学
Paillier密码体制
可验证秘密共享
推论
方案(数学)
秘密分享
安全性分析
服务器
隐私保护
加密
信息隐私
信息敏感性
移动设备
计算机安全
数据挖掘
密码系统
密码学
计算机网络
人工智能
万维网
数学
数学分析
集合(抽象数据类型)
混合密码体制
程序设计语言
作者
Haiqin Wu,Liangmin Wang,Ke Cheng,Dejun Yang,Jian Tang,Guoliang Xue
标识
DOI:10.1109/tnse.2022.3151228
摘要
In mobile crowdsensing, truth discovery (TD) enables a crowdsensing server to extract truthful information from possibly conflicting crowdsensing data. TD provides a more accurate truth estimation than traditional truth inference methods like majority voting and averaging. However, there still exist crucial data privacy (including sensory data, inferred truths, and intermediates) and practicability ( e.g. , efficiency, utility, and non-interaction) concerns in real-world crowdsensing applications. Existing researches either fail to provide adequate data privacy protection throughout the entire TD procedure or suffer from low practicability. In this paper, we propose two schemes: a basic privacy-aware TD scheme (BPTD) and a privacy-enhanced TD scheme (PETD) with two servers for mobile crowdsensing, comprehensively considering both privacy and practicability. BPTD is straightforwardly conducted on shared data with few user-side interactions, while achieving high efficiency. To further liberate mobile users and prevent disclosure of the intermediates, PETD incorporates a novel partial decryption-based Paillier Cryptosystem to work with secret sharing, offering enhanced privacy protection without relying on any user-side involvement. Additionally, we improve the efficiency of PETD via data packing. Security analysis shows the desired privacy goals. Compared to prior studies with the best security guarantees, our extensive experiments demonstrate a comparable and superior performance regarding different metrics.
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