Imitation Learning for Vision-based Lane Keeping Assistance
Paper in proceeding, 2017

This paper aims to investigate direct imitation learning from human drivers for the task of lane keeping assistance in highway and country roads using grayscale images from a single front view camera. The employed method utilizes convolutional neural networks (CNN) to act as a policy that is driving a vehicle. The policy is successfully learned via imitation learning using real-world data collected from human drivers and is evaluated in closed-loop simulated environments, demonstrating good driving behaviour and a robustness for domain changes. Evaluation is based on two proposed performance metrics measuring how well the vehicle is positioned in a lane and the smoothness of the driven trajectory.

Author

Christopher Innocenti

Zenuity AB

Henrik Linden

Zenuity AB

Ghazaleh Panahandeh

Zenuity AB

Lennart Svensson

Chalmers, Signals and Systems, Signal Processing and Biomedical Engineering

Nasser Mohammadiha

Zenuity AB

IEEE International Conference on Intelligent Transportation Systems-ITSC

2153-0009 (ISSN)


978-1-5386-1526-3 (ISBN)

20th IEEE International Conference on Intelligent Transportation Systems (ITSC)
Yokohama, Japan,

Subject Categories

Infrastructure Engineering

Robotics

Computer Vision and Robotics (Autonomous Systems)

DOI

10.1109/ITSC.2017.8317915

More information

Latest update

2/1/2024 1