Privacy-Preserving Autonomous Cab Service Management Scheme

Ahmed B. T. Sherif, Ahmad Alsharif, Mohamed Mahmoud, Jacob Moran
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引用次数: 6

Abstract

In the autonomous vehicles era, vehicles will be an on-demand service rather than an owned product, i.e., many passengers will rely on Autonomous Cabs (ACs) in their transportation. In order to guarantee the high quality of the AC service, the AC company needs to learn the geographic distribution of the potential service requests. The best way to obtain this information is by requesting the passengers to frequently report their locations, e.g., by using their smart-phones. However, learning the passengers' locations causes a serious location privacy issue. In this paper, we propose a privacy-preserving scheme for reporting location information for AC management. Data aggregation approach is used to preserve location privacy by providing the AC company with the total number of requests in each geographic area, while hiding the individual reports of the passengers. Unlike the existing aggregation schemes that do binary data addition, the used aggregation scheme does individual bits addition. Our analysis and experimental results demonstrate that the proposed scheme is efficient and can preserve location privacy.
保障私隐的自动驾驶的士服务管理计划
在自动驾驶汽车时代,汽车将成为一种按需服务,而不是一种自有产品,也就是说,许多乘客在出行时将依赖自动驾驶出租车(ACs)。为了保证AC服务的高质量,AC公司需要了解潜在服务请求的地理分布。获取这些信息的最好方法是要求乘客经常报告他们的位置,例如,通过使用他们的智能手机。然而,了解乘客的位置会导致严重的位置隐私问题。本文提出了一种用于AC管理的位置信息报告的隐私保护方案。数据聚合方法通过向AC公司提供每个地理区域的请求总数来保护位置隐私,同时隐藏乘客的个人报告。与现有的进行二进制数据相加的聚合方案不同,所使用的聚合方案进行单个位的相加。分析和实验结果表明,该方法有效地保护了位置隐私。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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