We apologize for a recent technical issue with our email system, which temporarily affected account activations. Accounts have now been activated. Authors may proceed with paper submissions. PhDFocusTM
CFP last date
20 December 2024
Reseach Article

Survey on Assessment of Cognitive States during Learning Activities using Brain Computer Interface based EEG

by Pratibha R. Bhise, Sonali B. Kulkarni, Talal A. Aldhaheri
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 174 - Number 15
Year of Publication: 2021
Authors: Pratibha R. Bhise, Sonali B. Kulkarni, Talal A. Aldhaheri
10.5120/ijca2021921022

Pratibha R. Bhise, Sonali B. Kulkarni, Talal A. Aldhaheri . Survey on Assessment of Cognitive States during Learning Activities using Brain Computer Interface based EEG. International Journal of Computer Applications. 174, 15 ( Jan 2021), 8-12. DOI=10.5120/ijca2021921022

@article{ 10.5120/ijca2021921022,
author = { Pratibha R. Bhise, Sonali B. Kulkarni, Talal A. Aldhaheri },
title = { Survey on Assessment of Cognitive States during Learning Activities using Brain Computer Interface based EEG },
journal = { International Journal of Computer Applications },
issue_date = { Jan 2021 },
volume = { 174 },
number = { 15 },
month = { Jan },
year = { 2021 },
issn = { 0975-8887 },
pages = { 8-12 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume174/number15/31752-2021921022/ },
doi = { 10.5120/ijca2021921022 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T00:22:11.244005+05:30
%A Pratibha R. Bhise
%A Sonali B. Kulkarni
%A Talal A. Aldhaheri
%T Survey on Assessment of Cognitive States during Learning Activities using Brain Computer Interface based EEG
%J International Journal of Computer Applications
%@ 0975-8887
%V 174
%N 15
%P 8-12
%D 2021
%I Foundation of Computer Science (FCS), NY, USA
Abstract

Brain-Computer Interface (BCI) associations the human’s neural world and the outer physical world by interpreting individuals’ brain signals into commands detectable by computer devices. In BCI cognitive neuroscience is a vital research field. In recent years, increasing studies have employed many technologies to monitor students’ cognitive states and attempted to provide adaptive interfaces and contents accordingly to improve learning efficiency of students. As there is a lot of literature on the theory, method and practice of psycho-physiological analysis in BCI context, in this paper we are only covering the part relates to cognitive state estimation with respect to learning activities. Detecting cognitive states is an important step towards adaptive learning because of this reason we move to set the goal of this paper is to review the learning activities and the parameters involved in estimating the cognitive state. According to this study the various authors has done the work on various learning fields such as Mathematics, Engineering, Programming and Medical helps to assess the cognitive states like memory, engagement, mental workload , attention etc. at National and International level.

References
  1. Lan T, Adami , A ,et.al,” Estimating Cognitive State Using EEG Signals”, In Proceedings of the 2005 13th European Signal Processing Conference, Antalya, Turkey, 4–8 , pp. 1 4,September 2005
  2. DraganskiB.,Gaser,C.,Kempermann,G.,Kuhn,H.G.,Winkler,J.,Büchel,C., et.al, “ Temporal and spatial dynamics of brain structure changes during extensive learning.”, J. Neurosci. 26, 6314–6317.doi:10.1523/jneurosci.4628- 05.2006
  3. Dimitriadis,S.I.,Sun,Y.,Kwok,K.,Laskaris,N.A.,Thakor,N.,and Bezerianos,A ,” Cognitive work load assessment based on the tensorial treatment of EEG estimates of cross-frequency phase interactions”, Ann. Biomed.Eng.
  4. Lotte, F. et al.: A Review of Classification Algorithms for EEG-based Brain-Computer Interfaces. J. Neural Eng. 4, 1–24 (2007).
  5. Chris Berka , Daniel J. Levendowski , Michelle N. Lumicao et.al.,” EEG Correlates of Task Engagement and Mental Workload in Vigilance, Learning, and Memory Tasks “,Aviation ,Space and Environmental Medicine ,Vol.78,pp.231-244,2007.
  6. Thanh An Nguyen , Yong Zeng ,”Proceedings of the ASME 2010 International Design Engineering Technical Conferences & Computers and Information in Engineering Conference,2010.
  7. Yongchang Li , Xiaowei Li ,et .al ,”A Real-time EEG-based BCI System for Attention Recognition in Ubiquitous Environment “,Researchgate,2011
  8. Andreas Fink , Daniela Schwab et.al ,” Sensitivity of EEG Upper Alpha Activity To Cognitive and Affective Creativity Interventions “,International Journal of Psychophysiology (ELSEVIER),pp.233-239,2011.
  9. Dan Szafir, Bilge Mutlu ,”Pay Attention ! Designing Adaptive Agents That Monitor and Improve User Engagement “, Researchgate ,2012.
  10. Ning-Han Liu , Cheng –Yu Chiang et.al ,”Recognizing the Degree of Human Attention Using EEG Signals from Mobile Sensors ”, Sensors , ISSN .1424-8220 ,pp.10273-10286 ,2013.
  11. Kavitha P.Thomas , A .P .Vinod ,” Enhancement of Attention and Cognitive Skills Using EEG Based Neurofeedback Game “,6th Annual International IEEE EMBS Conference on Neural Engineering San Diego,California,2013
  12. Nanda Nandagopal, Vijayalakshmi R , et.al,”Computational Techniques for Characterizing Cognition Using EEG Data-New Approaches “, 17th International Conference in Knowledge Based and Intelligent Information and Engineering Systems-KES 2013(ELSEVIER),pp.699-708,2013
  13. Hyunjeong Lee ,”Measuring Cognitive Load with Electroencephalography and Self –Report :Focus on the effect of English - Medium Learning for Korean Students “,An International Journal of Experimental Education Psychology ,ISSN.0144-3410,Vol.34,pp-838-848,2013
  14. Bashivan, P. et al.,” Neural correlates of visual working memory load through Unsuvised spatial filtering of EEG”, In: Proceedings of 3rd workshop on Machine Learning and interpretation in neuroimaging. (2013).
  15. Bashivan, P. et al.,”Spectro temporal dynamics of the EEG during working memory encoding and maintenance predicts individual behavioral capacity”, Eur. J. Neurosci. 40, 12, 3774–3784 (2014).
  16. Geeta U .Navalyal , Rahul D .Gavas ,” A Dynamic Attention Assessment and Enhancement Tool Using Computer Graphics”,Human-Centric Computing and Information Sciences ,2014
  17. Y.Liu , J.M. Ritchie ,et.al ,”A Fuzzy Psycho-physiological Approach to Enable the Understanding of an Engineer’s Affect Status During CAD Activities”, Computer Aided Design,pp.19-38,2014
  18. Ke .Y ,Qi .H ,et.al ,” An EEG-based mental workload estimator trained on working memory task can work well under simulated multi-attribute task. Front. Hum. Neuroscience, 8, 703.2014
  19. Poulami Ghosh ,Ankita Mazumder et.al ,” An EEG Study on Working Memory and Cognition”,Proceedings of the 2nd International Conference on Perception and Machine Intelligence ,pp.21-26 ,2015.
  20. Niannian Wang , Li Zhang ,et.al ,”EEG-based Research on Brain Functional Networks in Cognition “, Bio-Medical Materials and Engineering,pp.1107-1114,2015
  21. Necmettin Firat Ozkan , Emin Kahya ,” An Experiment in Use of Brain Computer Interfaces for Cognitive Researchers “, International Journal of Intelligence Science ,pp.80-88,2015
  22. Patricia Soto-Icaza ,Francisco Aboitiz et.al ,” Development of Social Skills in Children : Neural and Behavioral Evidence for the elaboration of Cognitive Models “, Frontiers in Neuroscience ,Volume .9 ,2015.
  23. Xiaowei Li ,Martyn Ratcliffe et.al ,” A Real –time EEG-based BCI System for Attention Recognition in Ubiquitous Environment”,Researchgate,pp.33-39,2015
  24. Fumihiko Taya , Yu Sun , et.al ,”Brain Enhancement Through Cognitive Training : A New Insight From Brain Connectome “, Frontiers in Systems Neuroscience ,Vol.9, pp.1-19,2015
  25. Pouya Bashivan , Irina Rish ,et.al ,”Mental State Recognition via Wearable EEG”,2016
  26. Raheel Zafar ,Sarat C.Dass et.al ,” Electroencephalogram-based Decoding Cognitive States Using Convolutional Neural Network and Likelihood Ratio Based Score Fusion “,PLOS ONE ,pp.1-23, 2017
  27. EEG-Based Evaluation of Cognitive and Emotional Arousal When Coding in Different Programming Languages by Amit Rajendra Desai,2017
  28. Xi Liu , Pang –Ning Tan, et.al ,” Automated Classification of EEG Signals For Predicting Student’s Cognitive State During Learning”,pp.1-8,2017 .
  29. Winnie K .Y .So , Savio W .H .Wong , et.al ,” An Evaluation of Mental Workload with Frontal EEG “,PLUS ONE ,pp.1-17,2017
  30. Mohammadpour, M.; Mozaffari, S. Classification of EEG-Based Attention for Brain Computer Interface.In Proceedings of the 2017 3rd Iranian Conference on Intelligent Systems and Signal Processing, Shahrood, Iran, 20–21 , pp. 34–37, December 2017.
  31. Richard W. Montgomery , Leslie D. Montgomery ,”EEG Monitoring of Cognitive Performance “,Physical Medicine and Rehabilitation Research ,ISSN.2398-3353,Vol.3(4),pp-1-5,2018
  32. J .J. J.Davis , R.Kozma ,”Visualization of Human Cognitive States Monitored by High Density EEG Arrays “,INNS Conference on Big Data and Deep Learning (ELSEVIER),ISSN.1877-0509,pp.219-231,2018.
  33. Asma Ben Khedher , Imene Jraidi et.al,”Static and Dynamic Eye Movement Metrics for Student’s Performance Assessment”,Smart Learning Environment(Springer),pp.1-12,2018
  34. Zainab Mohamed , Mohamed El Halaby et.al ,” Characterizing Focus Attention and Working Memory Using EEG “,Sensors,pp.1-21,2018
  35. Muhammad Zeeshan Baig , Manolya Kavakli ,”A Survey on Psycho-Physiological Analysis & Measurement Methods in Multimodal Systems “,Multimodal Technologies and Interact (MDPI),2019
  36. Muhammad Zeeshan Baig ,Manolya Kavakli ,”Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity During 3D Modelling “,Brain Sciences ,pp.1-20,2019
  37. Antoine Gaume ,Gerard Dreyfus et.al,”A Cognitive Brain Computer Interface Monitoring Sustained Attentional Variations During a Continuous Task”,Cognitive Neurodynamics,Vol.13.pp.257-269,2019
  38. Aurelien Appriou , Andrzej Cichocki ,et.al ,” Modern Machine Learning Algorithms to Classify Cognitive and Affective States from Electroencephalography Signals”, IEEE, Feb 2020.
  39. Pratibha R .Bhise ,Sonali B.Kulkarni, Talal A.Aldhaheri ,”Brain Computer Interface Based EE for Emotion Recognition System :A Systematic Review “,2nd International Conference on Innovative Mechanisms for Industry Applications (IEEE),March 2020.
  40. Talal A.Aldhaheri , Sonali B.Kulkarni , Pratibha R .Bhise ,” Brain Computer Interface and Neuro Linguistics : A Short Review “, 2nd International Conference on Sustainable Communication Networks and Application (Springer),August 2020.
Index Terms

Computer Science
Information Sciences

Keywords

Cognitive States Learning Activities BCI Electroencephalography