论文标题
隐藏我的噪音:室内位置隐私的当地差异隐私
Hide me Behind the Noise: Local Differential Privacy for Indoor Location Privacy
论文作者
论文摘要
在室内环境中,众多基于室内位置的服务(LBSS)的出现以及广泛使用许多类型的移动设备,导致生成大量人的位置数据。虽然地理空间数据包含有关个人活动的敏感信息,但以原始形式收集它可能会导致与人有关的个人信息泄漏,从而侵犯其隐私。本文提出了一个新颖的隐私感知框架,用于使用局部差异隐私(LDP)技术汇总室内位置数据,其中用户位置数据在用户的设备中本地更改,然后将其发送给聚合器。因此,用户的位置将隐藏在服务器或任何攻击者中。应用所提出的框架的实际可行性由两个现实世界数据集验证。还研究了数据集属性,隐私机制和隐私级别对我们框架的影响。实验结果表明,提出的框架可以保护用户的位置信息,室内地区不同区域的人口频率的准确性接近原始人口频率的频率,且对室内人的位置不了解。
The advent of numerous indoor location-based services (LBSs) and the widespread use of many types of mobile devices in indoor environments have resulted in generating a massive amount of people's location data. While geo-spatial data contains sensitive information about personal activities, collecting it in its raw form may lead to the leak of personal information relating to the people, violating their privacy. This paper proposes a novel privacy-aware framework for aggregating the indoor location data employing the Local Differential Privacy (LDP) technique, in which the user location data is changed locally in the user's device and is sent to the aggregator afterward. Therefore, the users' locations are kept hidden from a server or any attackers. The practical feasibility of applying the proposed framework is verified by two real-world datasets. The impact of dataset properties, the privacy mechanisms, and the privacy level on our framework are also investigated. The experimental results indicate that the presented framework can protect the location information of users, and the accuracy of the population frequency of different zones in the indoor area is close to that of the original population frequency with no knowledge about the location of people indoors.