Reinforcement learning algorithms in highway driving
Abstract
This thesis examines the potential of employing photorealistic synthetic data
for training neural networks to achieve collision-free autonomous driving in
highway environments. Centered around a case study of a highway accident
involving a Tesla Model 3, the research utilizes Unreal Engine 5 to reconstruct the event and explore the effectiveness of an End-to-End autopilot
system. The study innovatively applies Domain Structured Randomization
to generate varied driving scenarios, assessing the autopilot’s adaptability
and response. The absence of real-world domain access underscores the significance of synthetic data in simulating and analyzing the incident, aiming
to enhance the safety features of autonomous driving technologies.