access icon free Driver fatigue and drowsiness monitoring system with embedded electrocardiogram sensor on steering wheel

Real time driver health condition monitoring system with drowsiness alertness was proposed. A new embedded electrocardiogram (ECG) sensor with electrically conductive fabric electrodes on the steering wheel of a car was designed to monitor the driver's health condition. The ECG signals were measured at a sampling rate of 100 Hz from the driver's palms as they stay on a pair of conductive fabric electrodes located on the steering wheel. Practical tests were conducted using an embedded ECG sensor with a wireless sensor node, and their performance was assessed under non-stop 2 h driving test. The ECG signals were measured and transmitted wirelessly to a base station connected to a server PC in personal area network environment. The driver's health condition such as the normal, fatigued and drowsy states was analysed by evaluating the heart rate variability in the time and frequency domains.

Inspec keywords: wireless sensor networks; personal area networks; driver information systems; biomedical electrodes; electrocardiography

Other keywords: personal area network environment; car; wireless sensor node; server PC; ECG signals; conductive fabric electrodes; steering wheel; embedded electrocardiogram sensor; driver fatigue monitoring system; real time driver health condition monitoring system; drowsiness monitoring system

Subjects: Computer communications; Computer networks and techniques; Wireless sensor networks; Bioelectric signals; Traffic engineering computing

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