Identification of driver baselines
Abstract
This thesis aims to answer whether it is possible to produce one or more baselines
based on naturalistic driving data collected over a period of 8 months. The baseline
is based on variables extracted from the drivers action, such as acceleration and gaze
vectors, along with variables extracted from the nature of the trip, such as time of
day or road type. If shown that baselines can be deduced from these variables, it
can be used to improve existing ADAS in terms of both safety and comfort. The
analysis was made using statistical analysis, visual representations of data distributions,
Gaussian mixture model clustering and time series clustering. The results
suggests that it is not possible to determine only one baseline, or what that baseline
might be for each driver. Instead the results suggests (at two occurrences) multiple
baselines for each driver based on the nature of the trip. This may mean that
multiple baselines could be established for different scenarios the driver might find
itself. However as the data is limited, these findings may not be representative of a
larger population. To confirm the findings in this paper further research has to be
conducted on a larger set of data containing more drivers.
Degree
Student essay
Collections
Date
2022-06-27Author
Malmgren, Alexander
Daneshmand-Mehr, Fabian
Keywords
computer
science
computer science
Time series clustering
clustering
ADAS
driver profile
statistics
Language
eng