Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling

Modelling 3D objects in CAD software requires special skills which require a novice user to undergo a series of training exercises to obtain. To minimize the training time for a novice user, the user-dependent factors must be studied. we have presented a comparative analysis of novice/expert informa...

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Main Authors: Muhammad Zeeshan Baig, Manolya Kavakli
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Brain Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3425/9/2/24
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spelling doaj-d30e59d3d83c46249d47f30caaee82222020-11-25T01:59:04ZengMDPI AGBrain Sciences2076-34252019-01-01922410.3390/brainsci9020024brainsci9020024Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D ModellingMuhammad Zeeshan Baig0Manolya Kavakli1Department of Computing, Faculty of Science and Engineering, Macquaire University, Sydney, NSW 2109, AustraliaDepartment of Computing, Faculty of Science and Engineering, Macquaire University, Sydney, NSW 2109, AustraliaModelling 3D objects in CAD software requires special skills which require a novice user to undergo a series of training exercises to obtain. To minimize the training time for a novice user, the user-dependent factors must be studied. we have presented a comparative analysis of novice/expert information flow patterns. We have used Normalized Transfer Entropy (NTE) and Electroencephalogram (EEG) to investigate the differences. The experiment was divided into three cognitive states i.e., rest, drawing, and manipulation. We applied classification algorithms on NTE matrices and graph theory measures to see the effectiveness of NTE. The results revealed that the experts show approximately the same cognitive activation in drawing and manipulation states, whereas for novices the brain activation is more in manipulation state than drawing state. The hemisphere- and lobe-wise analysis showed that expert users have developed an ability to control the information flow in various brain regions. On the other hand, novice users have shown a continuous increase in information flow activity in almost all regions when doing drawing and manipulation tasks. A classification accuracy of more than 90% was achieved with a simple K-nearest neighbors (k-NN) to classify novice and expert users. The results showed that the proposed technique can be used to develop adaptive 3D modelling systems.https://www.mdpi.com/2076-3425/9/2/24noviceexperttransfer entropyinformation flow patternfunctional brain network3D modelling
collection DOAJ
language English
format Article
sources DOAJ
author Muhammad Zeeshan Baig
Manolya Kavakli
spellingShingle Muhammad Zeeshan Baig
Manolya Kavakli
Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
Brain Sciences
novice
expert
transfer entropy
information flow pattern
functional brain network
3D modelling
author_facet Muhammad Zeeshan Baig
Manolya Kavakli
author_sort Muhammad Zeeshan Baig
title Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
title_short Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
title_full Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
title_fullStr Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
title_full_unstemmed Connectivity Analysis Using Functional Brain Networks to Evaluate Cognitive Activity during 3D Modelling
title_sort connectivity analysis using functional brain networks to evaluate cognitive activity during 3d modelling
publisher MDPI AG
series Brain Sciences
issn 2076-3425
publishDate 2019-01-01
description Modelling 3D objects in CAD software requires special skills which require a novice user to undergo a series of training exercises to obtain. To minimize the training time for a novice user, the user-dependent factors must be studied. we have presented a comparative analysis of novice/expert information flow patterns. We have used Normalized Transfer Entropy (NTE) and Electroencephalogram (EEG) to investigate the differences. The experiment was divided into three cognitive states i.e., rest, drawing, and manipulation. We applied classification algorithms on NTE matrices and graph theory measures to see the effectiveness of NTE. The results revealed that the experts show approximately the same cognitive activation in drawing and manipulation states, whereas for novices the brain activation is more in manipulation state than drawing state. The hemisphere- and lobe-wise analysis showed that expert users have developed an ability to control the information flow in various brain regions. On the other hand, novice users have shown a continuous increase in information flow activity in almost all regions when doing drawing and manipulation tasks. A classification accuracy of more than 90% was achieved with a simple K-nearest neighbors (k-NN) to classify novice and expert users. The results showed that the proposed technique can be used to develop adaptive 3D modelling systems.
topic novice
expert
transfer entropy
information flow pattern
functional brain network
3D modelling
url https://www.mdpi.com/2076-3425/9/2/24
work_keys_str_mv AT muhammadzeeshanbaig connectivityanalysisusingfunctionalbrainnetworkstoevaluatecognitiveactivityduring3dmodelling
AT manolyakavakli connectivityanalysisusingfunctionalbrainnetworkstoevaluatecognitiveactivityduring3dmodelling
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