Classification of Driver Cognitive Load: Exploring the Benefits of Fusing Eye-Tracking and Physiological Measures

被引:37
作者
He, Dengbo [1 ]
Wang, Ziquan [1 ]
Khalil, Elias B. [1 ]
Donmez, Birsen [1 ]
Qiao, Guangkai [1 ]
Kumar, Shekhar [1 ]
机构
[1] Univ Toronto, Dept Mech & Ind Engn, Toronto, ON, Canada
基金
加拿大自然科学与工程研究理事会;
关键词
cognitive load estimation; machine learning; heart rate; Galvanic skin response; eye measures; MENTAL WORKLOAD; ON-ROAD; DISTRACTION; TASK; BEHAVIOR;
D O I
10.1177/03611981221090937
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
In-vehicle infotainment systems can increase cognitive load and impair driving performance. These effects can be alleviated through interfaces that can assess cognitive load and adapt accordingly. Eye-tracking and physiological measures that are sensitive to cognitive load, such as pupil diameter, gaze dispersion, heart rate (HR), and galvanic skin response (GSR), can enable cognitive load estimation. The advancement in cost-effective and nonintrusive sensors in wearable devices provides an opportunity to enhance driver state detection by fusing eye-tracking and physiological measures. As a preliminary investigation of the added benefits of utilizing physiological data along with eye-tracking data in driver cognitive load detection, this paper explores the performance of several machine learning models in classifying three levels of cognitive load imposed on 33 drivers in a driving simulator study: no external load, lower difficulty 1-back task, and higher difficulty 2-back task. We built five machine learning models, including k-nearest neighbor, support vector machine, feedforward neural network, recurrent neural network, and random forest (RF) on (1) eye-tracking data only, (2) HR and GSR, (3) eye-tracking and HR, (4) eye-tracking and GSR, and (5) eye-tracking, HR, and GSR. Although physiological data provided 1%-15% lower classification accuracies compared with eye-tracking data, adding physiological data to eye-tracking data increased model accuracies, with an RF classifier achieving 97.8% accuracy. GSR led to a larger boost in accuracy (29.3%) over HR (17.9%), with the combination of the two factors boosting accuracy by 34.5%. Overall, utilizing both physiological and eye-tracking measures shows promise for driver state detection applications.
引用
收藏
页码:670 / 681
页数:12
相关论文
共 46 条
[1]  
[Anonymous], 2015, PREPRINT
[2]  
Apple, FUT HLTH IS YOUR WRI
[3]   Towards Intelligent Data Analytics: A Case Study in Driver Cognitive Load Classification [J].
Barua, Shaibal ;
Ahmed, Mobyen Uddin ;
Begum, Shahina .
BRAIN SCIENCES, 2020, 10 (08) :1-19
[4]  
Binaee K., 2021, PROC ACM S EYE TRACK
[5]   Measuring neurophysiological signals in aircraft pilots and car drivers for the assessment of mental workload, fatigue and drowsiness [J].
Borghini, Gianluca ;
Astolfi, Laura ;
Vecchiato, Giovanni ;
Mattia, Donatella ;
Babiloni, Fabio .
NEUROSCIENCE AND BIOBEHAVIORAL REVIEWS, 2014, 44 :58-75
[6]   THE EFFECTS OF MOBILE TELEPHONING ON DRIVING PERFORMANCE [J].
BROOKHUIS, KA ;
DEVRIES, G ;
DEWAARD, D .
ACCIDENT ANALYSIS AND PREVENTION, 1991, 23 (04) :309-316
[7]  
Cadillac, 2021, CAD OWN
[8]  
Cardone D., 2021, PROC INFRARED SENSOR
[9]  
Chollet F., 2018, KERAS PYTHON DEEP LE
[10]   Diurnal variation of spontaneous eye blink rate in the elderly and its relationships with sleepiness and arousal [J].
De Padova, Vittoria ;
Barbato, Giuseppe ;
Conte, Francesca ;
Ficca, Gianluca .
NEUROSCIENCE LETTERS, 2009, 463 (01) :40-43