Comparing Output Modalities in End-to-End Driving
Date
2022
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
Self-driving car technology has made significant steps in the last ten years with the
advancements in neural networks. The first autonomous vehicles are driving in San
Francisco and Beijing. One of the promising approaches is end-to-end driving, where a
neural network transforms an input image from a camera to output commands to control
the vehicle. The most common output modalities are steering angle and trajectory. Both
have been extensively benchmarked but not compared in similar settings. Metrics are
usually calculated off-policy using a separated test dataset or on-policy using a simulator,
but these have proven to correlate weakly with real-life performance. In this thesis, the
comparison is made using an autonomous vehicle driving on WRC Rally Estonia tracks.
The results show that the trajectory prediction approach is better at road positioning and
recovering from non-ideal trajectories, which results in fewer situations where the safety
driver has to take over.
Description
Keywords
Computer Vision, artificial neural networks, autonomous vehicles, end-to-end-driving, model evaluation