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Detecting sleep in drivers during highly automated driving: the potential of physiological parameters
被引:26
|作者:
Woerle, Johanna
[1
]
Metz, Barbara
[1
]
Thiele, Christian
[2
]
Weller, Gert
[2
]
机构:
[1] WIVW GmbH, Robert Bosch Str 4, D-97209 Veitshochheim, Germany
[2] Joyson Safety Syst Aschaffenburg GmbH, Hussitenstr 34, D-13355 Berlin, Germany
关键词:
medical signal processing;
road safety;
electroencephalography;
sleep;
road accidents;
electrocardiography;
driver information systems;
electromyography;
physiology;
automation;
conventional measures;
driver state;
driving behaviour;
potential physiological measures;
high-fidelity driving simulator;
highly automated driving;
primary safety measure;
EuroNCAP roadmap 2025;
automated driving systems;
driver monitoring systems;
sleep detection;
DMS;
electrodermal activity;
EDA;
respiration;
ECG;
wakefulness;
PERFORMANCE;
RISK;
D O I:
10.1049/iet-its.2018.5529
中图分类号:
TM [电工技术];
TN [电子技术、通信技术];
学科分类号:
0808 ;
0809 ;
摘要:
Driver monitoring is added as a primary safety measure in the EuroNCAP roadmap 2025. Especially with the introduction of automated driving systems into the market, new requirements are set to driver monitoring systems (DMSs). When not being actively involved in driving, the risk of drivers becoming drowsy and even falling asleep at the wheel increases. Modern DMSs will have to be able to detect a driver falling asleep or sleeping in order for the automation to take appropriate actions. Conventional measures for detecting the driver state such as analysing the driving behaviour are not available in automated driving. The aim of the study was to identify potential physiological measures as a basis for the development of systems that are able to detect sleep in drivers during automated driving. A within-subjects study with N = 21 subjects was conducted in a high-fidelity driving simulator. Electromyography, electrodermal activity (EDA), respiration and electrocardiography (ECG) were measured in drivers during states of wakefulness and sleep. Sleep stages were assigned with the electroencephalography as a ground truth. The results indicate the potential of EDA and ECG parameters to differentiate between sleep and wakefulness. Implications for the implementation in DMS are discussed.
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页码:1241 / 1248
页数:8
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