The future of transportation is tightly connected to Autonomous Driving (AD). While a lot of progress has been made in recent years, there are still obstacles to overcome. One of the most critical issues is the safety verification of AD. A scenario-based verification approach that shifts tests from the fields to a virtual environment seems like a sophisticated approach to tackle the safety verification as tests need to be revised whenever changes are made to the AD. However, collecting and labelling data that can be used to construct scenarios is expensive and time-consuming to compute. In this work, we propose a unified framework for trajectory generation and validation in a consistent and principled way. We first explore methods to genera...
This paper details the design of an autonomous vehicle CAD toolchain, which captures formal descript...
In recent years, a surging development of vehicles and continuous enhancement of transportation infr...
Driving safety is a top priority for autonomous vehicles. Orthogonal to prior work handling accident...
In order to assure safety in self-driving cars, the Autonomous Drive functionality needs to pass saf...
© 2016 IEEE. Vehicle trajectory prediction is crucial for autonomous driving and advanced driver ass...
To assess the safety of automated driving systems (ADS), all potentially critical situations have t...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
Closed-loop validation of autonomous vehicles is an open problem, significantly influencing developm...
Vehicle trajectory prediction at intersections is both essential and challenging for autonomous vehi...
Deep neural networks are black box models that are hard to interpret by humans. However, organizatio...
Vehicle trajectory prediction is nowadays a fundamental pillar of self-driving cars. Both the indust...
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accura...
Recently there has been an increase in the number of available autonomous vehicle (AV) models. To ev...
With the application of auto-piloting systems on household automobiles, learning-based path predicti...
This paper summarizes our formal approach to testing autonomous vehicles (AVs) in simulation for the...
This paper details the design of an autonomous vehicle CAD toolchain, which captures formal descript...
In recent years, a surging development of vehicles and continuous enhancement of transportation infr...
Driving safety is a top priority for autonomous vehicles. Orthogonal to prior work handling accident...
In order to assure safety in self-driving cars, the Autonomous Drive functionality needs to pass saf...
© 2016 IEEE. Vehicle trajectory prediction is crucial for autonomous driving and advanced driver ass...
To assess the safety of automated driving systems (ADS), all potentially critical situations have t...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
Closed-loop validation of autonomous vehicles is an open problem, significantly influencing developm...
Vehicle trajectory prediction at intersections is both essential and challenging for autonomous vehi...
Deep neural networks are black box models that are hard to interpret by humans. However, organizatio...
Vehicle trajectory prediction is nowadays a fundamental pillar of self-driving cars. Both the indust...
Trajectory planning is essential for self-driving vehicles and has stringent requirements for accura...
Recently there has been an increase in the number of available autonomous vehicle (AV) models. To ev...
With the application of auto-piloting systems on household automobiles, learning-based path predicti...
This paper summarizes our formal approach to testing autonomous vehicles (AVs) in simulation for the...
This paper details the design of an autonomous vehicle CAD toolchain, which captures formal descript...
In recent years, a surging development of vehicles and continuous enhancement of transportation infr...
Driving safety is a top priority for autonomous vehicles. Orthogonal to prior work handling accident...