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Evaluation of perceived urgency from single-trial EEG data elicited by upper-body vibration feedback using deep learning
by
Park, Wanjoo
, Eid, Mohamad
, Shen, Jiacheng
, Alsuradi, Haneen
in
631/378/1457/1945
/ 631/378/3917
/ 639/166/985
/ 639/166/987
/ Adult
/ Arousal
/ Attention
/ Brain
/ Deep Learning
/ EEG
/ Electroencephalography - methods
/ Feedback
/ Feedback, Sensory - physiology
/ Female
/ Humanities and Social Sciences
/ Humans
/ Male
/ multidisciplinary
/ Neural networks
/ Neural Networks, Computer
/ Science
/ Science (multidisciplinary)
/ Statistical analysis
/ Synchronization
/ Theta rhythms
/ Vibration
/ Young Adult
2024
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Evaluation of perceived urgency from single-trial EEG data elicited by upper-body vibration feedback using deep learning
by
Park, Wanjoo
, Eid, Mohamad
, Shen, Jiacheng
, Alsuradi, Haneen
in
631/378/1457/1945
/ 631/378/3917
/ 639/166/985
/ 639/166/987
/ Adult
/ Arousal
/ Attention
/ Brain
/ Deep Learning
/ EEG
/ Electroencephalography - methods
/ Feedback
/ Feedback, Sensory - physiology
/ Female
/ Humanities and Social Sciences
/ Humans
/ Male
/ multidisciplinary
/ Neural networks
/ Neural Networks, Computer
/ Science
/ Science (multidisciplinary)
/ Statistical analysis
/ Synchronization
/ Theta rhythms
/ Vibration
/ Young Adult
2024
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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Evaluation of perceived urgency from single-trial EEG data elicited by upper-body vibration feedback using deep learning
by
Park, Wanjoo
, Eid, Mohamad
, Shen, Jiacheng
, Alsuradi, Haneen
in
631/378/1457/1945
/ 631/378/3917
/ 639/166/985
/ 639/166/987
/ Adult
/ Arousal
/ Attention
/ Brain
/ Deep Learning
/ EEG
/ Electroencephalography - methods
/ Feedback
/ Feedback, Sensory - physiology
/ Female
/ Humanities and Social Sciences
/ Humans
/ Male
/ multidisciplinary
/ Neural networks
/ Neural Networks, Computer
/ Science
/ Science (multidisciplinary)
/ Statistical analysis
/ Synchronization
/ Theta rhythms
/ Vibration
/ Young Adult
2024
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Evaluation of perceived urgency from single-trial EEG data elicited by upper-body vibration feedback using deep learning
Journal Article
Evaluation of perceived urgency from single-trial EEG data elicited by upper-body vibration feedback using deep learning
2024
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Overview
Notification systems that convey urgency without adding cognitive burden are crucial in human–computer interaction. Haptic feedback systems, particularly those utilizing vibration feedback, have emerged as a compelling solution, capable of providing desirable levels of urgency depending on the application. High-risk applications require an evaluation of the urgency level elicited during critical notifications. Traditional evaluations of perceived urgency rely on subjective self-reporting and performance metrics, which, while useful, are not real-time and can be distracting from the task at hand. In contrast, EEG technology offers a direct, non-intrusive method of assessing the user’s cognitive state. Leveraging deep learning, this study introduces a novel approach to evaluate perceived urgency from single-trial EEG data, induced by vibration stimuli on the upper body, utilizing our newly collected urgency-via-vibration dataset. The proposed model combines a 2D convolutional neural network with a temporal convolutional network to capture spatial and temporal EEG features, outperforming several established EEG models. The proposed model achieves an average classification accuracy of 83% through leave-one-subject-out cross-validation across three urgency classes (not urgent, urgent, and very urgent) from a single trial of EEG data. Furthermore, explainability analysis showed that the prefrontal brain region, followed by the central brain region, are the most influential in predicting the urgency level. A follow-up neural statistical analysis revealed an increase in event-related synchronization (ERS) in the theta frequency band (4–7 Hz) with the increased level of urgency, which is associated with high arousal and attention in the neuroscience literature. A limitation of this study is that the proposed model’s performance was tested only the urgency-via-vibration dataset, which may affect the generalizability of the findings.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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