Machine Learning for Lane Positioning in Autonomous Vehicles

Examensarbete för masterexamen

Please use this identifier to cite or link to this item:
Download file(s):
File Description SizeFormat 
256186.pdfFulltext2.05 MBAdobe PDFView/Open
Type: Examensarbete för masterexamen
Master Thesis
Title: Machine Learning for Lane Positioning in Autonomous Vehicles
Authors: Hansson, Anders
Sundqvist, Richard
Abstract: The lateral position of a car in its current lane affects the perceived comfort and safety of passengers. The problem of selecting a comfortable lateral position for an autonomous car in traffic is not trivial. This thesis addresses this issue by breaking it down into two related problems to be solved, using Feed-Forward Neural Networks and Random Forests. The first problem, Barrier Detection (BD), is a perception problem. It involves identifying relevant variables for detecting barriers on the road side and distinguishing barriers from instances resulting in similar sensor stimuli such as traffic signs. The second problem, Lane Positioning (LP), is a Decision & Control (D&C) problem. The task is to select a suitable lateral position for the host vehicle within the current lane, given the immediate surroundings. Furthermore, strict timing and memory requirements are in place. This necessitates pruning and preprocessing of high-dimensional raw data before the data is forwarded, and places constraints on the implementations. Both problems were approached with supervised learning methods, and the results for BD were promising with a test set accuracy of 80% using neural networks. The neural networks for LP failed, with the best neural network attaining only 60% accuracy. By using a different classifier type, Random Forest (RF), an out-of-bag1 error of 4% was achieved for the LP problem. However, sufficient performance was only reached for extreme lateral offsets and these classifiers grossly violated the memory constraints. Random lateral offsets in the data appeared to overshadow the offsets taken in response to significant scenarios. This could explain why the classifiers failed to identify trends for smaller offsets.
Keywords: Fysik;Physical Sciences
Issue Date: 2018
Publisher: Chalmers tekniska högskola / Institutionen för fysik (Chalmers)
Chalmers University of Technology / Department of Physics (Chalmers)
Collection:Examensarbeten för masterexamen // Master Theses

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.