A popular way to plan trajectories in dynamic urban scenarios for Autonomous Vehicles is to rely on explicitly specified and hand crafted cost functions, coupled with random sampling in the trajectory space to find the minimum cost trajectory. Such methods require a high number of samples to find a low-cost trajectory and might end up with a highly suboptimal trajectory given the planning time budget. We explore the application of normalizing flows for improving the performance of trajectory planning for autonomous vehicles (AVs). Our key insight is to learn a sampling policy in a low-dimensional latent space of expert-like trajectories, out of which the best sample is selected for execution. By modeling the trajectory planner's cost manifo...
Interest in autonomous vehicles (AVs) has significantly increased in recent years, but despite the h...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Sampling-based motion planning (SBMP) is a major trajectory planning approach in autonomous driving ...
In the past few years, automotive and technology companies have made major progress towards the real...
Abstract — Autonomous vehicles are effective environ-mental sampling platforms whose sampling perfor...
Sampling-based motion planning(SMPs) approach has been very popular for its ability of computing col...
Motivated by autonomous aerial vehicles, this thesis provides a methodology for optimal trajectory p...
This paper presents a method for inverse learning of a control objective defined in terms of require...
The paper presents a novel learning-based sampling strategy that guarantees rejection-free sampling ...
Autonomous vehicles are becoming the platform of choice for large-scale exploration of environmental...
Department of Computer EngineeringIntelligent transportation systems and autonomous vehicles can imp...
Autonomous driving vehicles (ADVs) are sleeping giant intelligent machines that perceive their envir...
Learning-based approaches have achieved remarkable performance in the domain of autonomous driving. ...
The successful integration of autonomous robots in real-world environments strongly depends on their...
Interest in autonomous vehicles (AVs) has significantly increased in recent years, but despite the h...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
Sampling-based motion planning (SBMP) is a major trajectory planning approach in autonomous driving ...
In the past few years, automotive and technology companies have made major progress towards the real...
Abstract — Autonomous vehicles are effective environ-mental sampling platforms whose sampling perfor...
Sampling-based motion planning(SMPs) approach has been very popular for its ability of computing col...
Motivated by autonomous aerial vehicles, this thesis provides a methodology for optimal trajectory p...
This paper presents a method for inverse learning of a control objective defined in terms of require...
The paper presents a novel learning-based sampling strategy that guarantees rejection-free sampling ...
Autonomous vehicles are becoming the platform of choice for large-scale exploration of environmental...
Department of Computer EngineeringIntelligent transportation systems and autonomous vehicles can imp...
Autonomous driving vehicles (ADVs) are sleeping giant intelligent machines that perceive their envir...
Learning-based approaches have achieved remarkable performance in the domain of autonomous driving. ...
The successful integration of autonomous robots in real-world environments strongly depends on their...
Interest in autonomous vehicles (AVs) has significantly increased in recent years, but despite the h...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...
In recent years, imitation learning (IL) has been widely used in industry as the core of autonomous ...