Driving on roads is restricted by various traffic rules, aiming to ensure safety for all traffic participants. However, human road users usually do not adhere to these rules strictly, resulting in varying degrees of rule conformity. Such deviations from given rules are key components of today's road traffic. In autonomous driving, robotic agents can disturb traffic flow, when rule deviations are not taken into account. In this paper, we present an approach to derive the distribution of degrees of rule conformity from human driving data. We demonstrate our method with the Waymo Open Motion dataset and Safety Distance and Speed Limit rules.Comment: Daniel Bogdoll and Moritz Nekolla contributed equally. Accepted for publication at IV 202
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Accurately modeling the behavior of traffic participants is essential for safely and efficiently nav...
In this paper, we use the concept of artificial risk fields to predict how human operators control a...
Automated driving is expected to play a central role in future mobility systems by enabling, among o...
In this letter, we investigate how to resolve conflicting motions for mixed robot-robot and human-ro...
There is quickly growing literature on machine-learned models that predict human driving trajectorie...
As more and more autonomous vehicles (AVs) are being deployed on public roads, designing socially co...
Autonomous vehicles (AV’s) are appearing on roads, based on standard robotic mapping and navigation ...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
Abstract — The rules that govern decision making in systems controlled by humans are often simple to...
This study aims at modelling drivers’ speed in car-following during braking situations at intersecti...
The introduction of highly-automated driving functions promises to increase safety and comfort, but ...
There are many examples of cases where access to improved models of human behavior and cognition has...
The past decade has witnessed significant breakthroughs in autonomous driving technologies. We are h...
In this paper we investigate the effect of the unpredictability of surrounding cars on an ego-car pe...
Recent transportation research suggests that autonomous vehicles (AVs) have the potential to improve...
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Automated driving is expected to play a central role in future mobility systems by enabling, among o...