Autonomous Vehicle Motion Planning using Kernelized Movement Primitives

Author(s):  
Naitian Deng ◽  
Yunduan Cui ◽  
Shitian Zhang ◽  
Huiyun Li
Author(s):  
Sarah M. Thornton ◽  
Francis E. Lewis ◽  
Vivian Zhang ◽  
Mykel J. Kochenderfer ◽  
J. Christian Gerdes

2014 ◽  
Vol 15 (5) ◽  
pp. 2249-2260 ◽  
Author(s):  
Georg Tanzmeister ◽  
Martin Friedl ◽  
Dirk Wollherr ◽  
Martin Buss

2020 ◽  
Vol 10 (21) ◽  
pp. 7716
Author(s):  
Tamás Hegedűs ◽  
Balázs Németh ◽  
Péter Gáspár

In the development of autonomous vehicles, the design of real-time motion-planning is a crucial problem. The computation of the vehicle trajectory requires the consideration of safety, dynamic and comfort aspects. Moreover, the prediction of the vehicle motion in the surroundings and the real-time planning of the autonomous vehicle trajectory can be complex tasks. The goal of this paper is to present low-complexity motion-planning for overtaking scenarios in parallel traffic. The developed method is based on the generation of a graph, which contains feasible vehicle trajectories. The reduction of the complexity in the real-time computation is achieved through the reduction of the graph with clustering. In the motion-planning algorithm, the predicted motion of the surrounding vehicles is taken into consideration. The prediction algorithm is based on density functions of the surrounding vehicle motion, which are developed through real measurements. The resulted motion-planning algorithm is able to guarantee a safe and comfortable trajectory for the autonomous vehicle. The effectiveness of the method is illustrated through simulation examples using a high-fidelity vehicle dynamic simulator.


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