Safernet: Safe transportation routing in the era of internet of vehicles and mobile crowd sensing

Q Liu, S Kumar, V Mago - 2017 14th IEEE Annual Consumer …, 2017 - ieeexplore.ieee.org
Q Liu, S Kumar, V Mago
2017 14th IEEE Annual Consumer Communications & Networking …, 2017ieeexplore.ieee.org
World wide road traffic fatality and accident rates are high, and this is true even in
technologically advanced countries like the USA. Despite the advances in Intelligent
Transportation Systems, safe transportation routing ie, finding safest routes is largely an
overlooked paradigm. In recent years, large amount of traffic data has been produced by
people, Internet of Vehicles and Internet of Things (IoT). Also, thanks to advances in cloud
computing and proliferation of mobile communication technologies, it is now possible to …
World wide road traffic fatality and accident rates are high, and this is true even in technologically advanced countries like the USA. Despite the advances in Intelligent Transportation Systems, safe transportation routing i.e., finding safest routes is largely an overlooked paradigm. In recent years, large amount of traffic data has been produced by people, Internet of Vehicles and Internet of Things (IoT). Also, thanks to advances in cloud computing and proliferation of mobile communication technologies, it is now possible to perform analysis on vast amount of generated data (crowd sourced) and deliver the result back to users in real time. This paper proposes SafeRNet, a safe route computation framework which takes advantage of these technologies to analyze streaming traffic data and historical data to effectively infer safe routes and deliver them back to users in real time. SafeRNet utilizes Bayesian network to formulate safe route model. Furthermore, a case study is presented to demonstrate the effectiveness of our approach using real traffic data. SafeRNet intends to improve drivers' safety in a modern technology rich transportation system.
ieeexplore.ieee.org
以上显示的是最相近的搜索结果。 查看全部搜索结果