This paper investigates real-time on-road motion planning algorithms for autonomous passenger vehicles (APV) in urban environments, and propose a computationally efficient planning formulation. Two key properties, tunability and stability, are emphasized when designing the proposed planner. The main contributions of this paper are: · A computationally efficient decoupled space-time trajectory planning structure. · The formulation of optimization-free elastic-band-based path planning and speed-constraint-based temporal planning routines with pre-determined runtime. · Identification of continuity problems with previous cost-based planners that cause tunability and stability issues.</p
We present the motion planning framework for an autonomous vehicle navigating through urban environm...
Abstract. We present a motion planner for autonomous on-road driving, especially on highways. It ada...
Autonomous vehicles must be able to react in a timely manner to typical and unpredictable situation...
<p>This paper investigates real-time on-road motion planning algorithms for autonomous passenger veh...
In this paper, an efficient real-time autonomous driving motion planner with trajectory optimization...
In order to achieve smooth autonomous driving in real-life urban and highway environments, a motion ...
Autonomous vehicles must be able to react in a timely manner to typical and unpredictable situations...
Abstract. In order to achieve smooth autonomous driving in real-life urban and highway environments,...
We present the motion planning framework for an autonomous vehicle navigating through urban environm...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
We present the motion planning framework for an autonomous vehicle navigating through urban environm...
Abstract. We present a motion planner for autonomous on-road driving, especially on highways. It ada...
Autonomous vehicles must be able to react in a timely manner to typical and unpredictable situation...
<p>This paper investigates real-time on-road motion planning algorithms for autonomous passenger veh...
In this paper, an efficient real-time autonomous driving motion planner with trajectory optimization...
In order to achieve smooth autonomous driving in real-life urban and highway environments, a motion ...
Autonomous vehicles must be able to react in a timely manner to typical and unpredictable situations...
Abstract. In order to achieve smooth autonomous driving in real-life urban and highway environments,...
We present the motion planning framework for an autonomous vehicle navigating through urban environm...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
The urban environment is amongst the most difficult domains for autonomous vehicles. The vehicle mus...
We present the motion planning framework for an autonomous vehicle navigating through urban environm...
Abstract. We present a motion planner for autonomous on-road driving, especially on highways. It ada...
Autonomous vehicles must be able to react in a timely manner to typical and unpredictable situation...