SafeShareRide:基于边缘的拼车服务攻击检测

Liangkai Liu, Xingzhou Zhang, Mu Qiao, Weisong Shi
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引用次数: 32

摘要

优步(Uber)和滴滴(Didi)等拼车服务非常受欢迎;然而,如何保证乘客和司机的安全仍然是一个很大的挑战。目前最先进的工作主要采用云模式,通过车载终端设备收集的数据上传到云端并在云端进行处理。然而,像视频这样的数据可能太大,无法实时上传到云端。当车辆行驶时,网络通信可能会变得不稳定,导致数据上传的高延迟。此外,从商业角度来看,大量数据传输和存储的成本也是一个大问题。由于边缘计算可以实现更强大的计算终端设备,因此可以设计一个延迟保证框架来确保车内安全。在本文中,我们提出了一种基于边缘的拼车服务攻击检测方法,即SafeShareRide,它可以近乎实时地检测车辆中发生的危险事件。SafeShareRide在司机和乘客的智能手机上都实现了。SafeShareRide的检测包括三个阶段:语音识别、驾驶行为检测、视频捕获和分析。在语音识别或驾驶行为检测阶段检测到的异常事件将触发第三阶段的视频采集和分析。视频数据处理也进行了重新设计:视频压缩在边缘进行,节省上传带宽,视频分析在云端进行。我们通过利用开源算法实现SafeShareRide系统。我们的实验包括SafeShareRide与其他基于边缘和基于云的方法之间的性能比较,每个检测阶段的CPU使用情况和内存使用情况,以及静止和移动场景之间的性能比较。最后,我们总结了基于智能手机的边缘计算系统的几个见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SafeShareRide: Edge-Based Attack Detection in Ridesharing Services
Ridesharing services, such as Uber and Didi, are enjoying great popularity; however, a big challenge remains in guaranteeing the safety of passenger and driver. State-of-the-art work has primarily adopted the cloud model, where data collected through end devices on vehicles are uploaded to and processed in the cloud. However, data such as video can be too large to be uploaded onto the cloud in real time. When a vehicle is moving, the network communication can become unstable, leading to high latency for data uploading. In addition, the cost of huge data transfer and storage is a big concern from a business point of view. As edge computing enables more powerful computing end devices, it is possible to design a latency-guaranteed framework to ensure in-vehicle safety. In this paper, we propose an edge-based attack detection in ridesharing services, namely SafeShareRide, which can detect dangerous events happening in the vehicle in near real time. SafeShareRide is implemented on both drivers' and passengers' smartphones. The detection of SafeShareRide consists of three stages: speech recognition, driving behavior detection, and video capture and analysis. Abnormal events detected during the stages of speech recognition or driving behavior detection will trigger the video capture and analysis in the third stage. The video data processing is also redesigned: video compression is conducted at the edge to save upload bandwidth while video analysis is conducted in the cloud. We implement the SafeShareRide system by leveraging open source algorithms. Our experiments include a performance comparison between SafeShareRide and other edge-based and cloud-based approaches, CPU usage and memory usage of each detection stage, and a performance comparison between stationary and moving scenarios. Finally, we summarize several insights into smartphone based edge computing systems.
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