Robots and autonomous vehicles must rely on sensor observations, e.g., from lidars and cameras, to comprehend their environment and provide safe, efficient services. In multi-agent scenarios, they must additionally account for other agents' intrinsic motivations, which ultimately determine the observed and future behaviors. Dynamic game theory provides a theoretical framework for modeling the behavior of agents with different objectives who interact with each other over time. Previous works employing dynamic game theory often overlook occluded agents, which can lead to risky navigation decisions. To tackle this issue, this paper presents an inverse dynamic game technique which optimizes the game model itself to infer unobserved, occluded ag...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
This study examines the pursuit-evasion problem for coordinating multiple robotic pursuers to locate...
Autonomous Racing awards agents that react to opponents' behaviors with agile maneuvers towards prog...
Autonomous navigation in crowded spaces poses a challenge for mobile robots due to the highly dynami...
Robots in complex multi-agent environments should reason about the intentions of observed and curren...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
Interactions between road agents present a significant challenge in trajectory prediction, especiall...
Autonomous systems which are designed to assist humans in complex environments, are often required t...
In order for autonomous systems like robots, drones, and self-driving cars to be reliably introduced...
Several important real-world problems involve multiple entities interacting with each other and can ...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
Understanding activities of people in a monitored environment is a topic of active research, motivat...
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
This paper proposes a novel decision-making framework for autonomous vehicles (AVs), called predicto...
\u3cp\u3eThis paper presents a method for observational learning in autonomous agents. A formalism b...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
This study examines the pursuit-evasion problem for coordinating multiple robotic pursuers to locate...
Autonomous Racing awards agents that react to opponents' behaviors with agile maneuvers towards prog...
Autonomous navigation in crowded spaces poses a challenge for mobile robots due to the highly dynami...
Robots in complex multi-agent environments should reason about the intentions of observed and curren...
In recent years, there has been enormous public interest in autonomous vehicles (AV), with more than...
Interactions between road agents present a significant challenge in trajectory prediction, especiall...
Autonomous systems which are designed to assist humans in complex environments, are often required t...
In order for autonomous systems like robots, drones, and self-driving cars to be reliably introduced...
Several important real-world problems involve multiple entities interacting with each other and can ...
This paper presents a strategy for planning robot motions in dynamic, uncertain environments (DUEs)....
Understanding activities of people in a monitored environment is a topic of active research, motivat...
This paper presents a strategy for planning robot motions in dynamic, cluttered, and uncertain envir...
This paper proposes a novel decision-making framework for autonomous vehicles (AVs), called predicto...
\u3cp\u3eThis paper presents a method for observational learning in autonomous agents. A formalism b...
Autonomous systems such as Connected Autonomous Vehicles (CAVs), assistive robots are set improve th...
This study examines the pursuit-evasion problem for coordinating multiple robotic pursuers to locate...
Autonomous Racing awards agents that react to opponents' behaviors with agile maneuvers towards prog...