Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology

Vehicle-driving in real traffic can be considered as a human-machine system involving not only the attribute of the vehicle movement but also the human visual perception, cognition and motion of the driver. The study of driving behaviours, therefore, would integrate information related to driver psy...

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Main Authors: Sun, Qian (Chayn), Xia, Jianhong (Cecilia), Nadarajah, Nandakumaran, Falkmer, Torbjorn, Foster, Jonathan, Lee, Hoe
Format: Journal Article
Published: Taylor & Francis Asia Pacific (Singapore) 2015
Subjects:
Online Access:http://hdl.handle.net/20.500.11937/7432
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author Sun, Qian (Chayn)
Xia, Jianhong (Cecilia)
Nadarajah, Nandakumaran
Falkmer, Torbjorn
Foster, Jonathan
Lee, Hoe
author_facet Sun, Qian (Chayn)
Xia, Jianhong (Cecilia)
Nadarajah, Nandakumaran
Falkmer, Torbjorn
Foster, Jonathan
Lee, Hoe
author_sort Sun, Qian (Chayn)
building Curtin Institutional Repository
collection Online Access
description Vehicle-driving in real traffic can be considered as a human-machine system involving not only the attribute of the vehicle movement but also the human visual perception, cognition and motion of the driver. The study of driving behaviours, therefore, would integrate information related to driver psychology, vehicle dynamics and road information in order to tackle research questions concerning driving safety. This paper describes a conceptual framework and an integrated GIS data model of a visual-motor coordination model (VMCM) to investigate drivers’ driving behaviour via the combination of vision tracking and vehicle positioning. The eye tracker recorded eye fixations and duration on video images to exhibit the driver’s visual search pattern and the traffic scenes. Real-time kinematic (RTK) post-processing of multi-GNSS (global navigation satellite system) tracking generated the vehicle movement trajectory at centimeter-level accuracy, which encompasses precise lateral positioning and speed control parameters of driving behaviours. The eye fixation data were then geocoded and linked to the vehicle movement trajectory to represent the VMCM on the GIS platform. An implementation prototype of the framework and the VMCM for a study of older drivers is presented in this paper. The spatial-temporal visualisation and statistical analysis based on the VMCM data-set allow for a greater insight into the inherent variability of older drivers’ visual search and motor behaviours. The research framework has demonstrated a discriminant and ecologically valid approach in driving behaviour assessment, which can also be used in studies for other cohort populations with modified driving scenarios or experiment designs.
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format Journal Article
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institution Curtin University Malaysia
institution_category Local University
last_indexed 2025-11-14T06:16:13Z
publishDate 2015
publisher Taylor & Francis Asia Pacific (Singapore)
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spelling curtin-20.500.11937-74322017-09-13T16:09:22Z Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology Sun, Qian (Chayn) Xia, Jianhong (Cecilia) Nadarajah, Nandakumaran Falkmer, Torbjorn Foster, Jonathan Lee, Hoe Visual-motor Coordination Model (VMCM) Driving behaviour RTK multi-GNSS Eye tracking Vehicle-driving in real traffic can be considered as a human-machine system involving not only the attribute of the vehicle movement but also the human visual perception, cognition and motion of the driver. The study of driving behaviours, therefore, would integrate information related to driver psychology, vehicle dynamics and road information in order to tackle research questions concerning driving safety. This paper describes a conceptual framework and an integrated GIS data model of a visual-motor coordination model (VMCM) to investigate drivers’ driving behaviour via the combination of vision tracking and vehicle positioning. The eye tracker recorded eye fixations and duration on video images to exhibit the driver’s visual search pattern and the traffic scenes. Real-time kinematic (RTK) post-processing of multi-GNSS (global navigation satellite system) tracking generated the vehicle movement trajectory at centimeter-level accuracy, which encompasses precise lateral positioning and speed control parameters of driving behaviours. The eye fixation data were then geocoded and linked to the vehicle movement trajectory to represent the VMCM on the GIS platform. An implementation prototype of the framework and the VMCM for a study of older drivers is presented in this paper. The spatial-temporal visualisation and statistical analysis based on the VMCM data-set allow for a greater insight into the inherent variability of older drivers’ visual search and motor behaviours. The research framework has demonstrated a discriminant and ecologically valid approach in driving behaviour assessment, which can also be used in studies for other cohort populations with modified driving scenarios or experiment designs. 2015 Journal Article http://hdl.handle.net/20.500.11937/7432 10.1080/14498596.2016.1149116 Taylor & Francis Asia Pacific (Singapore) restricted
spellingShingle Visual-motor Coordination Model (VMCM)
Driving behaviour
RTK multi-GNSS
Eye tracking
Sun, Qian (Chayn)
Xia, Jianhong (Cecilia)
Nadarajah, Nandakumaran
Falkmer, Torbjorn
Foster, Jonathan
Lee, Hoe
Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title_full Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title_fullStr Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title_full_unstemmed Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title_short Assessing Drivers’ Visual-motor Coordination Using Eye Tracking, GNSS and GIS: a Spatial Turn in Driving Psychology
title_sort assessing drivers’ visual-motor coordination using eye tracking, gnss and gis: a spatial turn in driving psychology
topic Visual-motor Coordination Model (VMCM)
Driving behaviour
RTK multi-GNSS
Eye tracking
url http://hdl.handle.net/20.500.11937/7432