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Nonnegative Matrix Factorization based privacy preservation in vehicular communication

机译:车载通信中基于非负矩阵分解的隐私保护

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Vehicular Ad hoc Networks (VANETs) provide enjoyable driving experience through traffic information collected by moving vehicles on the road. When a vehicle discovers any events such as car accident, traffic congestion, hazardous road condition, etc., it shares such information with other vehicles through Road Side Units (RSUs). Inevitably, its location information also needs to be included in the message for specific and accurate information. However, drivers may not be comfortable sending their locations to others because there is a chance that the privacy of the driver can be compromised. Thus, they might choose not to report discovered events, which can cause highly degrading performance of the network. In this paper, we propose a Nonnegative Matrix Factorization (NMF) based privacy preservation scheme to perturb the source location data without cryptography while it can still calculate the location of the event occurred. The proposed scheme utilizes the intrinsic property of NMF to distort the data for protecting driver's location privacy. It then clusters the drivers in accordance with their locations, the relative distances and directions, as well as the timestamps. By doing so, events can be identified based on the clusters while driver's private information is preserved.
机译:车载自组织网络(VANET)通过道路上行驶的车辆收集的交通信息提供令人愉悦的驾驶体验。当车辆发现任何事件,例如车祸,交通拥堵,危险的道路状况等时,它会通过路边单元(RSU)与其他车辆共享这些信息。不可避免地,其位置信息也需要包含在消息中以获取特定而准确的信息。但是,驾驶员可能不习惯将自己的位置发送给其他人,因为有可能会损害驾驶员的隐私。因此,他们可能选择不报告发现的事件,这可能会导致网络性能严重下降。在本文中,我们提出了一种基于非负矩阵分解(NMF)的隐私保护方案,可以在无需加密的情况下干扰源位置数据,同时仍然可以计算事件发生的位置。所提出的方案利用NMF的固有特性来扭曲数据,以保护驾驶员的位置隐私。然后根据驾驶员的位置,相对距离和方向以及时间戳将驾驶员分组。这样,可以在保留驾驶员的私人信息的同时基于群集识别事件。

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