SAFERIDES: Application of decentralized control edge-computing to ridesharing monitoring services

Samaa Elnagar , Kweku Muata Osei Bryson , Manoj Thomas
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Abstract

Edge computing changed the face of many industries and services. Common edge computing models offload computing which is prone to security risks and privacy breach. However, advances in deep learning enabled Internet of Things (IoTs) to onload tasks and run cognitive tasks locally. This research introduces a decentralized-control edge model where computation and decision-making are moved to the IoT level. The model aims at decreasing communication and computation dependance on the edge which affect efficiency and latency. The model also limits data transfer to the edge to avoid security and privacy risks. Decentralized control is a key to many business applications that prioritizes safety, real-time response, and privacy such as ridesharing monitoring and industrial operations. To examine the model, we developed SAFERIDES, a scene-aware ridesharing monitoring system where smart phones are detecting violations at the runtime. Current monitoring systems require costly infrastructure and continuous network connectivity. However, SAFRIDES uses optimized deep learning models that run locally on IoTs to detect and record violations in ridesharing. The system achieved the lowest latency among current solution, while minimizing data sharing and maintaining privacy. Moreover, decentralized edge computing empowers IoTs and upgrades their functionality from sensing to independent decision-making.
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SAFERIDES:分散控制边缘计算在共享乘车监控服务中的应用
边缘计算改变了许多行业和服务的面貌。常见的边缘计算模式卸载计算,容易造成安全风险和隐私泄露。然而,深度学习的进步使物联网(IoT)能够卸载任务并在本地运行认知任务。这项研究引入了一种分散控制的边缘模型,将计算和决策转移到物联网层面。该模型旨在减少边缘对通信和计算的依赖,因为通信和计算会影响效率和延迟。该模型还限制向边缘传输数据,以避免安全和隐私风险。分散控制是许多优先考虑安全、实时响应和隐私的商业应用的关键,如共享乘车监控和工业运营。为了研究该模型,我们开发了 SAFERIDES,这是一个场景感知共享汽车监控系统,智能手机可在运行时检测违规行为。目前的监控系统需要昂贵的基础设施和持续的网络连接。然而,SAFRIDES 使用在本地物联网上运行的优化深度学习模型来检测和记录共享出行中的违规行为。该系统实现了当前解决方案中最低的延迟,同时最大限度地减少了数据共享并维护了隐私。此外,分散式边缘计算增强了物联网的能力,并将其功能从感知升级到独立决策。
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CiteScore
19.20
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