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Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker

Authorized Users Only
2017
Authors
Mijović, Pavle
Milovanović, Miloš
Gligorijević, Ivan
Ković, Vanja
Živanović-Macuzić, Ivana
Mijović, Bogdan
Article (Published version)
Metadata
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Abstract
In the present work we used wearable EEG sensor for recording brain activity during simulated assembly work, in replicated industrial environment. We investigated attention related modalities of P300 ERP component and engagement index (EI), which is extracted from signal power ratios of alpha, beta and frequency bands. Simultaneously, we quantified the task unrelated movements, which are previously reported to be related to attention level, in an automated way employing kinect TM sensor. Reaction times were also recorded and investigated. We found that during the monotonous task, both the P300 amplitude and EI decreased as the time of the task progressed. On the other hand, the increase of the task unrelated movement quantity was observed, together with the increase in RTs. These findings lead to conclusion that the monotonous assembly work induces the decrease of attention and engagement of the workers as the task progresses, which is observable in both neural (EEG) and behavioral (RT... and unrelated movements) signal modalities. Apart from observing how the attention-related modalities are changing over time, we investigated the functional relationship between the neural and behavioral modalities by using Pearson's correlation. Since the Person's correlation coefficients showed the functional relationship between the attention-related modalities, we proposed the creation of the multimodal implicit Human-Computer Interaction (HCI) system, which could acquire and process neural and behavioral data in real-time, with the aim of creating the system that could be aware of the operator's mental states during the industrial work, consequently improving the operator's well-being.

Keywords:
Wireless EEG / P300 / Neuroergonomics / Kinect / ERP / Attention
Source:
Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I, 2017, 10284, 66-78
Publisher:
  • Springer International Publishing Ag, Cham
Funding / projects:
  • EU - FP7 Marie Curie Actions FP7-PEOPLE-2011-ITN

DOI: 10.1007/978-3-319-58628-1_6

ISSN: 0302-9743

WoS: 000449655200006

Scopus: 2-s2.0-85025116550
[ Google Scholar ]
2
1
URI
http://reff.f.bg.ac.rs/handle/123456789/2390
Collections
  • Radovi istraživača / Researcher's publications - Odeljenje za psihologiju
Institution/Community
Psihologija / Psychology
TY  - JOUR
AU  - Mijović, Pavle
AU  - Milovanović, Miloš
AU  - Gligorijević, Ivan
AU  - Ković, Vanja
AU  - Živanović-Macuzić, Ivana
AU  - Mijović, Bogdan
PY  - 2017
UR  - http://reff.f.bg.ac.rs/handle/123456789/2390
AB  - In the present work we used wearable EEG sensor for recording brain activity during simulated assembly work, in replicated industrial environment. We investigated attention related modalities of P300 ERP component and engagement index (EI), which is extracted from signal power ratios of alpha, beta and frequency bands. Simultaneously, we quantified the task unrelated movements, which are previously reported to be related to attention level, in an automated way employing kinect TM sensor. Reaction times were also recorded and investigated. We found that during the monotonous task, both the P300 amplitude and EI decreased as the time of the task progressed. On the other hand, the increase of the task unrelated movement quantity was observed, together with the increase in RTs. These findings lead to conclusion that the monotonous assembly work induces the decrease of attention and engagement of the workers as the task progresses, which is observable in both neural (EEG) and behavioral (RT and unrelated movements) signal modalities. Apart from observing how the attention-related modalities are changing over time, we investigated the functional relationship between the neural and behavioral modalities by using Pearson's correlation. Since the Person's correlation coefficients showed the functional relationship between the attention-related modalities, we proposed the creation of the multimodal implicit Human-Computer Interaction (HCI) system, which could acquire and process neural and behavioral data in real-time, with the aim of creating the system that could be aware of the operator's mental states during the industrial work, consequently improving the operator's well-being.
PB  - Springer International Publishing Ag, Cham
T2  - Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I
T1  - Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker
EP  - 78
SP  - 66
VL  - 10284
DO  - 10.1007/978-3-319-58628-1_6
ER  - 
@article{
author = "Mijović, Pavle and Milovanović, Miloš and Gligorijević, Ivan and Ković, Vanja and Živanović-Macuzić, Ivana and Mijović, Bogdan",
year = "2017",
abstract = "In the present work we used wearable EEG sensor for recording brain activity during simulated assembly work, in replicated industrial environment. We investigated attention related modalities of P300 ERP component and engagement index (EI), which is extracted from signal power ratios of alpha, beta and frequency bands. Simultaneously, we quantified the task unrelated movements, which are previously reported to be related to attention level, in an automated way employing kinect TM sensor. Reaction times were also recorded and investigated. We found that during the monotonous task, both the P300 amplitude and EI decreased as the time of the task progressed. On the other hand, the increase of the task unrelated movement quantity was observed, together with the increase in RTs. These findings lead to conclusion that the monotonous assembly work induces the decrease of attention and engagement of the workers as the task progresses, which is observable in both neural (EEG) and behavioral (RT and unrelated movements) signal modalities. Apart from observing how the attention-related modalities are changing over time, we investigated the functional relationship between the neural and behavioral modalities by using Pearson's correlation. Since the Person's correlation coefficients showed the functional relationship between the attention-related modalities, we proposed the creation of the multimodal implicit Human-Computer Interaction (HCI) system, which could acquire and process neural and behavioral data in real-time, with the aim of creating the system that could be aware of the operator's mental states during the industrial work, consequently improving the operator's well-being.",
publisher = "Springer International Publishing Ag, Cham",
journal = "Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I",
title = "Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker",
pages = "78-66",
volume = "10284",
doi = "10.1007/978-3-319-58628-1_6"
}
Mijović, P., Milovanović, M., Gligorijević, I., Ković, V., Živanović-Macuzić, I.,& Mijović, B.. (2017). Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker. in Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I
Springer International Publishing Ag, Cham., 10284, 66-78.
https://doi.org/10.1007/978-3-319-58628-1_6
Mijović P, Milovanović M, Gligorijević I, Ković V, Živanović-Macuzić I, Mijović B. Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker. in Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I. 2017;10284:66-78.
doi:10.1007/978-3-319-58628-1_6 .
Mijović, Pavle, Milovanović, Miloš, Gligorijević, Ivan, Ković, Vanja, Živanović-Macuzić, Ivana, Mijović, Bogdan, "Investigating Brain Dynamics in Industrial Environment - Integrating Mobile EEG and Kinect for Cognitive State Detection of a Worker" in Augmented Cognition: Neurocognition and Machine Learning, Ac 2017, Pt I, 10284 (2017):66-78,
https://doi.org/10.1007/978-3-319-58628-1_6 . .

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