Title
Investigating the Feasibility of Vehicle Telemetry Data as a Means of Predicting Driver Workload
Abstract
AbstractDriving is a safety critical task that requires a high level of attention from the driver. Although drivers have limited attentional resources, they often perform secondary tasks such as eating or using a mobile phone. When performing multiple tasks in the vehicle, the driver can become overloaded and the risk of a crash is increased. If a vehicle is aware that the driver is currently under high workload, the vehicle functionality can be changed in order to minimise any further demand. Traditionally, workload is measured using physiological sensors that require often intrusive and expensive equipment. Another approach may be to use vehicle telemetry data as a performance measure for workload. In this paper, the authors present the Warwick-JLR Driver Monitoring Dataset DMD and analyse it to investigate the feasibility of using vehicle telemetry data for determining the driver workload. They perform a statistical analysis of subjective ratings, physiological data, and vehicle telemetry data collected during a track study. A data mining methodology is then presented to build predictive models using this data, for the driver workload monitoring problem.
Year
DOI
Venue
2017
10.4018/ijmhci.2017070104
Periodicals
Keywords
Field
DocType
CAN-Bus, Data Collection, Driver Monitoring, ECG, EDA
Monitoring problem,Computer science,Workload,Telemetry,Real-time computing,Human–computer interaction,Mobile phone,Cognition,Statistical analysis
Journal
Volume
Issue
ISSN
9
3
1942-390X
Citations 
PageRank 
References 
0
0.34
25
Authors
6
Name
Order
Citations
PageRank
Phillip Taylor185.60
Nathan Griffiths211515.49
Abhir Bhalerao339937.56
Zhou Xu401.69
Adam Gelencser500.34
Thomas Popham663.89