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arxiv: 1709.03853 · v1 · pith:6VYD36AZnew · submitted 2017-09-12 · 💻 cs.LG

Imitation Learning for Vision-based Lane Keeping Assistance

classification 💻 cs.LG
keywords imitationlanelearningassistancedriversdrivinghumankeeping
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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.

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