Driver Behaviour Profiling Using Dynamic Bayesian Network
Publication Date
2018Author
James I. Obuhuma, Henry O. Okoyo and Sylvester O. McOyowo
Metadata
Show full item recordAbstract/ Overview
In the recent past, there has been a rapid
increase in the number of vehicles and diversification of
road networks worldwide. The biggest challenge now lies
on how to monitor and analyse behaviours of vehicle
drivers as a catalyst to road safety. Driver behaviour
depends on the state and nature of the road, the state of the
driver, vehicle conditions, and actions of other road users
among other factors. This paper illustrates the ability of
Dynamic Bayesian Networks towards determination of
driving styles with respect to acceleration, cornering and
braking patterns. Bayesian Networks are probabilistic
graphical models that map a set of variables and their
conditional dependencies. Sample test results showed that
the 2-Time-slice Bayesian Network model is suitable for
generation of driver profiles using only four GPS data
parameters namely speed, altitude, direction and signal
strength against time. The model classifies driver profiles
into two sets of observations: driver behaviour and nature
of operational environment. Adoption of the model could
offer a cost effective, easy to implement and use solution
that could find many applications in vehicle driver
recruiting firms, vehicle insurance companies and
transport and road safety authorities among other sectors.