Authors
Maximilian Jaritz, Raoul De Charette, Marin Toromanoff, Etienne Perot, Fawzi Nashashibi
Publication date
2018/5/21
Conference
2018 IEEE international conference on robotics and automation (ICRA)
Pages
2070-2075
Publisher
IEEE
Description
We present research using the latest reinforcement learning algorithm for end-to-end driving without any mediated perception (object recognition, scene understanding). The newly proposed reward and learning strategies lead together to faster convergence and more robust driving using only RGB image from a forward facing camera. An Asynchronous Actor Critic (A3C) framework is used to learn the car control in a physically and graphically realistic rally game, with the agents evolving simultaneously on tracks with a variety of road structures (turns, hills), graphics (seasons, location) and physics (road adherence). A thorough evaluation is conducted and generalization is proven on unseen tracks and using legal speed limits. Open loop tests on real sequences of images show some domain adaption capability of our method.
Total citations
20182019202020212022202320244253643403824
Scholar articles
M Jaritz, R De Charette, M Toromanoff, E Perot… - 2018 IEEE international conference on robotics and …, 2018