In the context of autonomous driving and road situation awareness, this manuscript introduces a Bayesian network that enables the prediction of participant vehicles (PVs) circulating on a highway. The network architecture combines Long-Short-Term-Memory recurrent Deep networks and Support Vector Machines as computational nodes in a graph. The network inputs are real data acquired by radar and synthetic data generated mimicking the real ones. The interaction among multiple vehicles is handled explicitly by introducing the Allowance Factors that model the constraints of the possible interactions of the PVs and the ego car in the trajectory forecast estimation. Results obtained on the conducted tests show the ability of the system to predict t...
Vehicle-to-vehicle communication is a solution to improve the quality of on-road traveling in terms ...
The trajectory prediction of neighboring agents of an autonomous vehicle is essential for autonomous...
When driving a car, people can usually predict the intention of other road users with high confidenc...
In the context of autonomous driving and road situation awareness, this manuscript introduces a Baye...
Trajectory prediction of surrounding vehicles is a critical task for connected and autonomous vehicl...
To be able to understand the dynamic driving environment, an autonomous vehicle needs to predict the...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Predicting the trajectories of surrounding vehicles by considering their interactions is an essentia...
Vehicle trajectory prediction at intersections is both essential and challenging for autonomous vehi...
This work explores the design of a central collaborative driving strategy between connected cars wit...
The last few years have seen a significant interest in driver behavior recognition. This is particul...
Autonomous driving is a challenging problem because the autonomous vehicle must understand complex a...
Vehicle maneuver prediction plays an important role in ADAS (Advanced Driver Assistance Systems) and...
Predicting future trajectories of surrounding agents and conducting motion planning based on interac...
An autonomous vehicle should be able to operate amidst numerous other human-driven vehicles, each dr...
Vehicle-to-vehicle communication is a solution to improve the quality of on-road traveling in terms ...
The trajectory prediction of neighboring agents of an autonomous vehicle is essential for autonomous...
When driving a car, people can usually predict the intention of other road users with high confidenc...
In the context of autonomous driving and road situation awareness, this manuscript introduces a Baye...
Trajectory prediction of surrounding vehicles is a critical task for connected and autonomous vehicl...
To be able to understand the dynamic driving environment, an autonomous vehicle needs to predict the...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Predicting the trajectories of surrounding vehicles by considering their interactions is an essentia...
Vehicle trajectory prediction at intersections is both essential and challenging for autonomous vehi...
This work explores the design of a central collaborative driving strategy between connected cars wit...
The last few years have seen a significant interest in driver behavior recognition. This is particul...
Autonomous driving is a challenging problem because the autonomous vehicle must understand complex a...
Vehicle maneuver prediction plays an important role in ADAS (Advanced Driver Assistance Systems) and...
Predicting future trajectories of surrounding agents and conducting motion planning based on interac...
An autonomous vehicle should be able to operate amidst numerous other human-driven vehicles, each dr...
Vehicle-to-vehicle communication is a solution to improve the quality of on-road traveling in terms ...
The trajectory prediction of neighboring agents of an autonomous vehicle is essential for autonomous...
When driving a car, people can usually predict the intention of other road users with high confidenc...