基于群体感知的轨迹恢复保护隐私压缩感知

L. Kong, Liang He, Xiao-Yang Liu, Yu Gu, Minyou Wu, Xuemei Liu
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引用次数: 62

摘要

基于位置的服务经历了爆炸式的增长,并从利用单个位置发展到整个轨迹。由于硬件和能量的限制,在轨迹中通常会有许多丢失的数据。为了准确地恢复完整的轨迹,众感提供了一种很有前途的方法。该方法利用多个用户轨迹之间的相关性和先进的压缩感知技术,在精度上明显优于传统的插值方法。然而,由于轨迹暴露了用户的日常活动,隐私问题是众筹中的一个主要问题。虽然现有的解决方案可以独立解决精确轨迹恢复和隐私问题,但没有一种设计能够同时解决这两个挑战。因此,在本文中,我们提出了一种新的隐私保护压缩感知(PPCS)方案,该方案在保持压缩感知的同态混淆特性的同时,对多个其他轨迹进行加密。在PPCS下,攻击者只能捕获加密的数据,因此保护了用户的隐私。此外,同态混淆特性保证了PPCS的恢复精度可与最先进的压缩感知设计相媲美。基于两个公开可用的具有大量用户和长持续时间的跟踪,我们进行了广泛的模拟来评估PPCS。结果表明,即使原始数据丢失高达50%,PPCS也能达到9000 m的高精度。
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 Compressive Sensing for Crowdsensing Based Trajectory Recovery
Location based services have experienced an explosive growth and evolved from utilizing a single location to the whole trajectory. Due to the hardware and energy constraints, there are usually many missing data within a trajectory. In order to accurately recover the complete trajectory, crowdsensing provides a promising method. This method resorts to the correlation among multiple users' trajectories and the advanced compressive sensing technique, which significantly outperforms conventional interpolation methods on accuracy. However, as trajectories exposes users' daily activities, the privacy issue is a major concern in crowdsensing. While existing solutions independently tackle the accurate trajectory recovery and privacy issues, yet no single design is able to address these two challenges simultaneously. Therefore in this paper, we propose a novel Privacy Preserving Compressive Sensing (PPCS) scheme, which encrypts a trajectory with several other trajectories while maintaining the homomorphic obfuscation property for compressive sensing. Under PPCS, adversaries can only capture the encrypted data, so the user privacy is preserved. Furthermore, the homomorphic obfuscation property guarantees that the recovery accuracy of PPCS is comparable to the state-of-the-art compressive sensing design. Based on two publicly available traces with numerous users and long durations, we conduct extensive simulations to evaluate PPCS. The results demonstrate that PPCS achieves a high accuracy of <;53 m and a large distortion between the encrypted and the original trajectories (a commonly adopted metric of privacy strength) of >9,000 m even when up to 50% original data are missing.
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