Integrating Imitation Learning with Human Driving Data into Reinforcement Learning to Improve Training Efficiency for Autonomous Driving
Heidi Lu

TL;DR
This paper presents a novel method combining imitation learning with reinforcement learning to enhance training efficiency for autonomous driving, demonstrating significant time savings and improved performance in simulation and real-world environments.
Contribution
The research introduces an integrated learning approach that leverages imitation learning data to accelerate reinforcement learning training for autonomous vehicles.
Findings
Successfully trained a mini-scale robot car to complete laps autonomously.
Achieved 80% reduction in training time compared to pure RL methods.
Demonstrated improved reward accumulation and efficiency in both simulated and real environments.
Abstract
Two current methods used to train autonomous cars are reinforcement learning and imitation learning. This research develops a new learning methodology and systematic approach in both a simulated and a smaller real world environment by integrating supervised imitation learning into reinforcement learning to make the RL training data collection process more effective and efficient. By combining the two methods, the proposed research successfully leverages the advantages of both RL and IL methods. First, a real mini-scale robot car was assembled and trained on a 6 feet by 9 feet real world track using imitation learning. During the process, a handle controller was used to control the mini-scale robot car to drive on the track by imitating a human expert driver and manually recorded the actions using Microsoft AirSim's API. 331 accurate human-like reward training samples were able to be…
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Taxonomy
TopicsReinforcement Learning in Robotics · Autonomous Vehicle Technology and Safety · Traffic control and management
