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arxiv: 1709.07381 · v1 · pith:Q3O6K55Wnew · submitted 2017-09-21 · 📊 stat.AP

If and When a Driver or Passenger is Returning to Vehicle: Framework to Infer Intent and Arrival Time

classification 📊 stat.AP
keywords driverintentpassengervehiclearrivalframeworkreturningtime
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This paper proposes a probabilistic framework for the sequential estimation of the likelihood of a driver or passenger(s) returning to the vehicle and time of arrival, from the available partial track of the user location. The latter can be provided by a smartphone navigational service and/or other dedicated (e.g. RF based) user-to-vehicle positioning solution. The introduced novel approach treats the tackled problem as an intent prediction task within a Bayesian formulation, leading to an efficient implementation of the inference routine with notably low training requirements. It effectively captures the long term dependencies in the trajectory followed by the driver/passenger to the vehicle, as dictated by intent, via a bridging distribution. Two examples are shown to demonstrate the efficacy of this flexible low-complexity technique.

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