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AuthorBalaji, Aswin
AuthorTripathi, Utkarsh
AuthorChamola, Vinay
AuthorBenslimane, Abderrahim
AuthorGuizani, Mohsen
Available date2022-11-13T07:01:56Z
Publication Date2021-01-01
Publication NameIEEE Transactions on Intelligent Transportation Systems
Identifierhttp://dx.doi.org/10.1109/TITS.2021.3125126
CitationBalaji, A., Tripathi, U., Chamola, V., Benslimane, A., & Guizani, M. (2021). Toward Safer Vehicular Transit: Implementing Deep Learning on Single Channel EEG Systems for Microsleep Detection. IEEE Transactions on Intelligent Transportation Systems.‏
ISSN15249050
URIhttps://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85119427236&origin=inward
URIhttp://hdl.handle.net/10576/36244
AbstractTechnological interventions are becoming commonplace in everyday vehicles. But utilization of biosignals that can enhance the overall driving experience is still limited. Microsleep is one such issue that needs intervention, owing to the difficulty in its detection and social acceptance of using wearable BCI devices during transit. Microsleep is a short duration of sleep that lasts from few to several seconds. It could occur unconsciously without the person in context realizing it. This, therefore, happens before the deep sleep and could also occur when performing critical tasks such as driving on a highway. By using modern-day advancements in Internet of Things (IoT) and Machine Learning, we can provide efficient solutions to prevent accidents due to microsleep during vehicular transit. However, it is noteworthy that distinguishing microsleep using a single channel system is a challenge. We have explored this using datasets provided by International BCI Competition Committee. Given the fact that the participants' values might not match the exact scenario, approaches for exploiting transitory phases using ANN/CNN have been developed and discussed in this paper. Transitory phases could include Wakefulness ↔ Non-Rapid Eye Movement-1 phase (NREM-1). Results show ≈95% increase in mean statistical agreements, which are represented by kappa values (CNN NREM1 → CNN Transition) and ≈77% increase in mean kappa (ANN NREM1 → ANN Transition). Hence, this work gives an initial indication whether classifiers trained on night sleep data can be used for microsleep detection in more real-world scenarios.
Languageen
PublisherInstitute of Electrical and Electronics Engineers Inc.
Subjectaccident avoidance.
Brain-computer interface
cognitive networking
Internet of Things
microsleep detection
TitleToward Safer Vehicular Transit: Implementing Deep Learning on Single Channel EEG Systems for Microsleep Detection
TypeArticle


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