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WiLocator: WiFi-Sensing Based Real-Time Bus Tracking and Arrival Time Prediction in Urban Environments
15
Citations
29
References
2016
Year
Unknown Venue
Arrival Time PredictionLocation TrackingLocation InformationEngineeringSmart CityUrban EnvironmentsMobility ModelingLocation AwarenessBusinessTravel TimeMobility ManagementMobile ComputingInternet Of ThingsArrival TimeLocalizationTransportation EngineeringSignal StrengthLocation Management
Offering the services of real-time tracking and arrival time prediction is a common welfare for bus riders and transit agencies, especially in urban environments. On the down side, the traditional GPS-based solutions work poorly in urban areas due to urban canyons, while the location systems based on cellular signal also suffer from inherent limitations. In this paper, we present a powerful tool named Signal Voronoi Diagram (SVD) to partition the radio-frequency (RF) signal space of WiFi Access Points (APs), distributed where a bus travels, into Signal Cells, and then into fine-grained Signal Tiles, tackling the problem of noisy received signal strength (RSS) readings and possible AP dynamics. On top of SVD, we present a novel framework so-called WiLocator, to track and predict the arrival time of an urban bus based on the surrounding WiFi information collected by the commodity off-the-shelf (COTS) smartphones of bus riders, the mobility constraint of a bus and the temporal consistency of travel time of buses on the overlapped road segments. We also show the WiLocator's power of generating an accurate and real-time traffic map with the predicted travel time on each road segment. We implement the prototype of WiLocator and conduct the in-situ experiment to demonstrate its accuracy.
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