Detection of driver drowsiness using wearable devices : a feasibility study of the proximity sensor.

Author(s)
He, J. Choi, W. Yang, Y. Lu, J. Wu, X. & Peng, K.
Year
Abstract

Drowsiness is one of the major factors that cause crashes in the transportation industry. Drowsiness detection systems can alert drowsy operators and potentially reduce the risk of crashes. In this study, a Google-Glass-based drowsiness detection system was developed and validated. The proximity sensor of Google Glass was used to monitor eye blink frequency. A simulated driving study was carried out to validate the system. Driving performance and eye blinks were compared between the two states of alertness and drowsiness while driving. Results of the study showed that drowsy drivers increased frequency of eye blinks, produced longer braking response time and increased lane deviation, compared to when they were alert. A threshold algorithm for proximity sensor can reliably detect eye blinks and proved the feasibility of using Google Glass to detect operator drowsiness. This technology provides a new platform to detect operator drowsiness and has the potential to reduce drowsiness-related crashes in driving and aviation. (Author/publisher)

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Publication

Library number
20210232 ST [electronic version only]
Source

Applied Ergonomics, Vol. 65 (November 2017), p. 473-480, ref.

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This publication is one of our other publications, and part of our extensive collection of road safety literature, that also includes the SWOV publications.