Simulation of autonomous vehicle systems requires that simulated traffic participants exhibit diverse and realistic behaviors. The use of prerecorded real-world traffic scenarios in simulation ensures realism but the rarity of safety critical events makes large scale collection of driving scenarios expensive. In this paper, we present DJINN - a diffusion based method of generating traffic scenarios. Our approach jointly diffuses the trajectories of all agents, conditioned on a flexible set of state observations from the past, present, or future. On popular trajectory forecasting datasets, we report state of the art performance on joint trajectory metrics. In addition, we demonstrate how DJINN flexibly enables direct test-time sampling from ...
<div>Autonomous vehicles have the potential to drastically improve the safety, efficiency and cost o...
Motion planning for autonomous robots in tight, interaction-rich, and mixed human-robot environments...
Automated vehicles (AVs) are tested in diverse scenarios, typically specified by parameters such as ...
The abilities to understand the social interaction behaviors between a vehicle and its surroundings ...
Diffusion models have emerged as powerful generative models in the text-to-image domain. This paper ...
Trajectory generation and prediction are two interwoven tasks that play important roles in planner e...
Predicting trajectories of multiple agents in interactive driving scenarios such as intersections, a...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Realistic and diverse traffic scenarios in large quantities are crucial for the development and vali...
Scenario-based testing for automated driving systems (ADS) must be able to simulate traffic scenario...
To validate the safety of automated vehicles (AV), scenario-based testing aims to systematically des...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
Motion prediction is crucial in enabling safe motion planning for autonomous vehicles in interactive...
Developing reliable autonomous driving algorithms poses challenges in testing, particularly when it ...
Accurately forecasting the motion of traffic actors is crucial for the deployment of autonomous vehi...
<div>Autonomous vehicles have the potential to drastically improve the safety, efficiency and cost o...
Motion planning for autonomous robots in tight, interaction-rich, and mixed human-robot environments...
Automated vehicles (AVs) are tested in diverse scenarios, typically specified by parameters such as ...
The abilities to understand the social interaction behaviors between a vehicle and its surroundings ...
Diffusion models have emerged as powerful generative models in the text-to-image domain. This paper ...
Trajectory generation and prediction are two interwoven tasks that play important roles in planner e...
Predicting trajectories of multiple agents in interactive driving scenarios such as intersections, a...
Inevitably, autonomous vehicles need to interact with other road participants in a variety of highly...
Realistic and diverse traffic scenarios in large quantities are crucial for the development and vali...
Scenario-based testing for automated driving systems (ADS) must be able to simulate traffic scenario...
To validate the safety of automated vehicles (AV), scenario-based testing aims to systematically des...
Autonomous driving systems have witnessed a significant development during the past years thanks to ...
Motion prediction is crucial in enabling safe motion planning for autonomous vehicles in interactive...
Developing reliable autonomous driving algorithms poses challenges in testing, particularly when it ...
Accurately forecasting the motion of traffic actors is crucial for the deployment of autonomous vehi...
<div>Autonomous vehicles have the potential to drastically improve the safety, efficiency and cost o...
Motion planning for autonomous robots in tight, interaction-rich, and mixed human-robot environments...
Automated vehicles (AVs) are tested in diverse scenarios, typically specified by parameters such as ...