Differentially Private Occupancy Monitoring from WiFi Access Points.

Abbas Zaidi, Ritesh Ahuja, Cyrus Shahabi
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引用次数: 2

Abstract

Accurately monitoring the number of individuals inside a building is vital to limiting COVID-19 transmission. Low adoption of contact tracing apps due to privacy concerns has increased pervasiveness of passive digital tracking alternatives. Large arrays of WiFi access points can conveniently track mobile devices on university and industry campuses. The CrowdMap system employed by the University of Southern California enables such tracking by collecting aggregate statistics from connections to access points around campus. However, since these devices can be used to infer the movement of individuals, there is still a significant risk that even aggregate occupancy statistics will violate the location privacy of individuals. We examine the use of Differential Privacy in reporting statistics from this system as measured using point and range count queries. We propose discretization schemes to model the positions of users given only user connections to WiFi access points. Using this information we are able to release accurate counts of occupants in areas of campus buildings such as labs, hallways, and large discussion halls with minimized risk to individual users' privacy.

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基于WiFi接入点的差异化私人占用监控。
准确监测建筑物内的人数对于限制COVID-19的传播至关重要。由于对隐私的担忧,接触者追踪应用的低采用率增加了被动数字追踪替代品的普及。大型WiFi接入点阵列可以方便地跟踪大学和工业园区的移动设备。南加州大学(University of Southern California)使用的CrowdMap系统通过收集校园周边接入点连接的总体统计数据,实现了这种跟踪。然而,由于这些设备可以用来推断个人的移动,因此即使是汇总占用统计数据也有很大的风险会侵犯个人的位置隐私。我们通过使用点和范围计数查询来检查在报告该系统统计数据中的差异隐私的使用。我们提出离散化方案来模拟用户的位置,只给用户连接到WiFi接入点。利用这些信息,我们能够发布校园建筑区域(如实验室、走廊和大型讨论厅)的准确居住者数量,将个人用户隐私的风险降至最低。
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