In this work, a framework for motion prediction of
vehicles and safety assessment of traffic scenes is presented. The
developed framework can be used for driver assistant systems
as well as for autonomous driving applications. In order to
assess the safety of the future trajectories of the vehicle, these
systems require a prediction of the future motion of all traffic
participants. As the traffic participants have a mutual influence
on each other, the interaction of them is explicitly considered in
this framework, which is inspired by an optimization problem.
Taking the mutual influence of traffic participants into account,
this framework differs from the existing approaches which
consider the interaction only insufficiently, suffering reliability
in real traffic scenes. For motion prediction, the collision probability
of a vehicle performing a certain maneuver, is computed.
Based on the safety evaluation and the assumption that drivers
avoid collisions, the prediction is realized. Simulation scenarios
and real-world results show the functionality.
«
In this work, a framework for motion prediction of
vehicles and safety assessment of traffic scenes is presented. The
developed framework can be used for driver assistant systems
as well as for autonomous driving applications. In order to
assess the safety of the future trajectories of the vehicle, these
systems require a prediction of the future motion of all traffic
participants. As the traffic participants have a mutual influence
on each other, the interaction of them is explicitly con...
»