EEG-Based Affect and Workload Recognition in a Virtual Driving Environment for ASD Intervention
Objective: To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training. Methods: Twenty adolescents with ASD participated in a six-session virtual reality driving simulator-bas...
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Published in | IEEE transactions on biomedical engineering Vol. 65; no. 1; pp. 43 - 51 |
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Main Authors | , , , , |
Format | Journal Article |
Language | English |
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United States
IEEE
01.01.2018
The Institute of Electrical and Electronics Engineers, Inc. (IEEE) |
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Abstract | Objective: To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training. Methods: Twenty adolescents with ASD participated in a six-session virtual reality driving simulator-based experiment, during which their electroencephalogram (EEG) data were recorded alongside driving events and a therapist's rating of their affective states and mental workload. Five feature generation approaches including statistical features, fractal dimension features, higher order crossings (HOC)-based features, power features from frequency bands, and power features from bins (Δf = 2 Hz) were applied to extract relevant features. Individual differences were removed with a two-step feature calibration method. Finally, binary classification results based on the k-nearest neighbors algorithm and univariate feature selection method were evaluated by leave-one-subject-out nested cross-validation to compare feature types and identify discriminative features. Results: The best classification results were achieved using power features from bins for engagement (0.95) and boredom (0.78), and HOC-based features for enjoyment (0.90), frustration (0.88), and workload (0.86). Conclusion: Offline EEG-based group-level classification models are feasible for recognizing binary low and high intensity of affect and workload of individuals with ASD in the context of driving. However, while promising the applicability of the models in an online adaptive driving task requires further development. Significance: The developed models provide a basis for an EEG-based passive brain computer interface system that has the potential to benefit individuals with ASD with an affect and workload-based individualized driving skill training intervention. |
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AbstractList | Objective: To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training. Methods: Twenty adolescents with ASD participated in a six-session virtual reality driving simulator-based experiment, during which their electroencephalogram (EEG) data were recorded alongside driving events and a therapist's rating of their affective states and mental workload. Five feature generation approaches including statistical features, fractal dimension features, higher order crossings (HOC)-based features, power features from frequency bands, and power features from bins (Δf = 2 Hz) were applied to extract relevant features. Individual differences were removed with a two-step feature calibration method. Finally, binary classification results based on the k-nearest neighbors algorithm and univariate feature selection method were evaluated by leave-one-subject-out nested cross-validation to compare feature types and identify discriminative features. Results: The best classification results were achieved using power features from bins for engagement (0.95) and boredom (0.78), and HOC-based features for enjoyment (0.90), frustration (0.88), and workload (0.86). Conclusion: Offline EEG-based group-level classification models are feasible for recognizing binary low and high intensity of affect and workload of individuals with ASD in the context of driving. However, while promising the applicability of the models in an online adaptive driving task requires further development. Significance: The developed models provide a basis for an EEG-based passive brain computer interface system that has the potential to benefit individuals with ASD with an affect and workload-based individualized driving skill training intervention. To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training.OBJECTIVETo build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training.Twenty adolescents with ASD participated in a six-session virtual reality driving simulator-based experiment, during which their electroencephalogram (EEG) data were recorded alongside driving events and a therapist's rating of their affective states and mental workload. Five feature generation approaches including statistical features, fractal dimension features, higher order crossings (HOC)-based features, power features from frequency bands, and power features from bins () were applied to extract relevant features. Individual differences were removed with a two-step feature calibration method. Finally, binary classification results based on the k-nearest neighbors algorithm and univariate feature selection method were evaluated by leave-one-subject-out nested cross-validation to compare feature types and identify discriminative features.METHODSTwenty adolescents with ASD participated in a six-session virtual reality driving simulator-based experiment, during which their electroencephalogram (EEG) data were recorded alongside driving events and a therapist's rating of their affective states and mental workload. Five feature generation approaches including statistical features, fractal dimension features, higher order crossings (HOC)-based features, power features from frequency bands, and power features from bins () were applied to extract relevant features. Individual differences were removed with a two-step feature calibration method. Finally, binary classification results based on the k-nearest neighbors algorithm and univariate feature selection method were evaluated by leave-one-subject-out nested cross-validation to compare feature types and identify discriminative features.The best classification results were achieved using power features from bins for engagement (0.95) and boredom (0.78), and HOC-based features for enjoyment (0.90), frustration (0.88), and workload (0.86).RESULTSThe best classification results were achieved using power features from bins for engagement (0.95) and boredom (0.78), and HOC-based features for enjoyment (0.90), frustration (0.88), and workload (0.86).Offline EEG-based group-level classification models are feasible for recognizing binary low and high intensity of affect and workload of individuals with ASD in the context of driving. However, while promising the applicability of the models in an online adaptive driving task requires further development.CONCLUSIONOffline EEG-based group-level classification models are feasible for recognizing binary low and high intensity of affect and workload of individuals with ASD in the context of driving. However, while promising the applicability of the models in an online adaptive driving task requires further development.The developed models provide a basis for an EEG-based passive brain computer interface system that has the potential to benefit individuals with ASD with an affect- and workload-based individualized driving skill training intervention.SIGNIFICANCEThe developed models provide a basis for an EEG-based passive brain computer interface system that has the potential to benefit individuals with ASD with an affect- and workload-based individualized driving skill training intervention. To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD) during driving skill training. Twenty adolescents with ASD participated in a six-session virtual reality driving simulator-based experiment, during which their electroencephalogram (EEG) data were recorded alongside driving events and a therapist's rating of their affective states and mental workload. Five feature generation approaches including statistical features, fractal dimension features, higher order crossings (HOC)-based features, power features from frequency bands, and power features from bins () were applied to extract relevant features. Individual differences were removed with a two-step feature calibration method. Finally, binary classification results based on the k-nearest neighbors algorithm and univariate feature selection method were evaluated by leave-one-subject-out nested cross-validation to compare feature types and identify discriminative features. The best classification results were achieved using power features from bins for engagement (0.95) and boredom (0.78), and HOC-based features for enjoyment (0.90), frustration (0.88), and workload (0.86). Offline EEG-based group-level classification models are feasible for recognizing binary low and high intensity of affect and workload of individuals with ASD in the context of driving. However, while promising the applicability of the models in an online adaptive driving task requires further development. The developed models provide a basis for an EEG-based passive brain computer interface system that has the potential to benefit individuals with ASD with an affect- and workload-based individualized driving skill training intervention. |
Author | Key, Alexandra P. Wade, Joshua W. Warren, Zachary E. Fan, Jing Sarkar, Nilanjan |
Author_xml | – sequence: 1 givenname: Jing surname: Fan fullname: Fan, Jing email: jing.fan@vanderbilt.edu organization: Electrical Engineering and Computer Science Department, Vanderbilt University, Nashville, TN, USA – sequence: 2 givenname: Joshua W. surname: Wade fullname: Wade, Joshua W. organization: Electrical Engineering and Computer Science DepartmentVanderbilt University – sequence: 3 givenname: Alexandra P. surname: Key fullname: Key, Alexandra P. organization: Vanderbilt Kennedy Center for Research on Human Development and Department of Hearing and Speech SciencesVanderbilt University – sequence: 4 givenname: Zachary E. surname: Warren fullname: Warren, Zachary E. organization: Treatment and Research Institute for Autism Spectrum Disorders, Pediatrics, Psychiatry and Special EducationVanderbilt Kennedy Center – sequence: 5 givenname: Nilanjan surname: Sarkar fullname: Sarkar, Nilanjan organization: Mechanical Engineering DepartmentElectrical Engineering and Computer Science DepartmentVanderbilt University |
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Cites_doi | 10.1109/TAFFC.2014.2339834 10.1016/j.cogbrainres.2005.01.014 10.1007/s10803-013-1764-4 10.1007/s004220050394 10.1007/s10803-012-1544-6 10.1016/S0301-0511(99)00002-2 10.1007/s10803-009-0890-5 10.3389/fnins.2015.00136 10.1109/TITB.2009.2034649 10.1007/s00371-015-1183-y 10.1016/j.ijhcs.2009.12.003 10.1007/978-3-642-39454-6_53 10.1155/2013/573734 10.1109/TBME.2012.2217495 10.1007/978-3-319-07440-5_43 10.1518/001872007X249875 10.1109/TBME.2010.2048568 10.1016/j.iheduc.2004.12.001 10.5014/ajot.2013.008821 10.1016/j.entcom.2009.09.007 10.1007/s10803-012-1470-7 10.1007/s10803-014-2166-y 10.1016/j.neuroimage.2013.10.067 10.1109/TVCG.2013.42 10.1016/j.biopsych.2006.11.012 10.1145/2892636 10.1016/j.brainres.2010.09.043 10.1016/S0896-6273(00)00115-X 10.7551/mitpress/7493.003.0031 10.1007/978-3-662-43790-2_11 |
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References | ref13 ref34 ref12 ref37 ref15 ref14 ref31 berka (ref23) 2007; 78 ref11 ref10 ref2 kohlmorgen (ref17) 2007; 1 ref39 csikszentmihalyi (ref16) 1990 lin (ref22) 2010; 57 ref38 szafir (ref21) 0 moray (ref32) 2013 fan (ref29) 0 dijksterhuis (ref19) 2015 cain (ref33) 2007 jasper (ref30) 1958; 10 ref24 ref26 ref25 ref20 ref42 ref41 wingate (ref1) 2014; 63 accardo (ref36) 1997; 77 ref28 ref27 chai (ref35) 2009; 1 ref8 ref7 ref9 ref4 wang (ref18) 2015 cox (ref3) 2015 ref6 ref5 ref40 |
References_xml | – ident: ref26 doi: 10.1109/TAFFC.2014.2339834 – ident: ref27 doi: 10.1016/j.cogbrainres.2005.01.014 – ident: ref6 doi: 10.1007/s10803-013-1764-4 – start-page: 3767 year: 0 ident: ref29 article-title: A step towards EEG-based brain computer interface for autism intervention publication-title: Proc Annu Int Conf IEEE Eng Med Biol Soc – volume: 77 start-page: 339 year: 1997 ident: ref36 article-title: Use of the fractal dimension for the analysis of electroencephalographic time series publication-title: Biol Cybern doi: 10.1007/s004220050394 – ident: ref11 doi: 10.1007/s10803-012-1544-6 – ident: ref20 doi: 10.1016/S0301-0511(99)00002-2 – volume: 10 start-page: 371 year: 1958 ident: ref30 article-title: The ten twenty electrode system of the international federation publication-title: Electroencephalography Clin Neurophysiology – ident: ref8 doi: 10.1007/s10803-009-0890-5 – ident: ref38 doi: 10.3389/fnins.2015.00136 – ident: ref24 doi: 10.1109/TITB.2009.2034649 – ident: ref41 doi: 10.1007/s00371-015-1183-y – volume: 78 start-page: 231b year: 2007 ident: ref23 article-title: EEG correlates of task engagement and mental workload in vigilance, learning, and memory tasks publication-title: Aviation Space Environ Med – ident: ref31 doi: 10.1016/j.ijhcs.2009.12.003 – start-page: 1 year: 2015 ident: ref3 article-title: Driving simulator performance in novice drivers with autism spectrum disorder: the role of executive functions and basic motor skills publication-title: J Autism Develop Disorders – ident: ref40 doi: 10.1007/978-3-642-39454-6_53 – volume: 63 start-page: 1 year: 2014 ident: ref1 article-title: Prevalence of autism spectrum disorder among children aged 8 years-autism and developmental disabilities monitoring network, 11 sites, United States, 2010 publication-title: MMWR Surveill Summ – ident: ref25 doi: 10.1155/2013/573734 – ident: ref39 doi: 10.1109/TBME.2012.2217495 – volume: 1 start-page: 1 year: 2009 ident: ref35 article-title: Classification of human emotions from EEG signals using statistical features and neural network publication-title: Int J Integr Eng – year: 2007 ident: ref33 article-title: A review of the mental workload literature – ident: ref7 doi: 10.1007/978-3-319-07440-5_43 – ident: ref34 doi: 10.1518/001872007X249875 – volume: 57 start-page: 1798 year: 2010 ident: ref22 article-title: EEG-based emotion recognition in music listening publication-title: IEEE Trans Biomed Eng doi: 10.1109/TBME.2010.2048568 – ident: ref14 doi: 10.1016/j.iheduc.2004.12.001 – start-page: 202 year: 2015 ident: ref19 article-title: Classifying visuomotor workload in a driving simulator using subject specific spatial brain patterns publication-title: Using neurophysiological signals that reflect cognitive or af f ective state – ident: ref4 doi: 10.5014/ajot.2013.008821 – ident: ref15 doi: 10.1016/j.entcom.2009.09.007 – ident: ref9 doi: 10.1007/s10803-012-1470-7 – start-page: 11 year: 0 ident: ref21 article-title: Pay attention! Designing adaptive agents that monitor and improve user engagement publication-title: Proc ACM Conf Human Factors Comput Syst – ident: ref5 doi: 10.1007/s10803-014-2166-y – ident: ref37 doi: 10.1016/j.neuroimage.2013.10.067 – ident: ref12 doi: 10.1109/TVCG.2013.42 – year: 1990 ident: ref16 publication-title: Flow The Psychology of Optimal Experience – start-page: 85 year: 2015 ident: ref18 article-title: Developing an EEG-based on-line closed-loop lapse detection and mitigation system publication-title: Using Neurophysiological Signals That Reflect Cognitive Affective State – ident: ref28 doi: 10.1016/j.biopsych.2006.11.012 – ident: ref13 doi: 10.1145/2892636 – ident: ref10 doi: 10.1016/j.brainres.2010.09.043 – year: 2013 ident: ref32 publication-title: Mental Workload Its Theory and Measurement – ident: ref2 doi: 10.1016/S0896-6273(00)00115-X – volume: 1 start-page: 409 year: 2007 ident: ref17 article-title: Improving human performance in a real operating environment through real-time mental workload detection publication-title: Towards Brain-Computer Interfacing doi: 10.7551/mitpress/7493.003.0031 – ident: ref42 doi: 10.1007/978-3-662-43790-2_11 |
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Snippet | Objective: To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder... To build group-level classification models capable of recognizing affective states and mental workload of individuals with autism spectrum disorder (ASD)... |
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SubjectTerms | Adolescent Adolescents Affective computing Algorithms Autism Autism Spectrum Disorder - physiopathology Autism Spectrum Disorder - psychology Autism Spectrum Disorder - rehabilitation Automobile Driving Bins Boredom Brain Brain models Classification Computer applications Computer simulation Data acquisition Driving ability EEG electroencephalogram Electroencephalography Electroencephalography - methods Emotional behavior Feature extraction Female Frequencies Frustration Human-computer interface Humans Implants Male mental workload recognition Signal Processing, Computer-Assisted Solid modeling Training Variable speed drives Virtual environments Virtual reality virtual reality-based driving simulator Workload Workloads |
Title | EEG-Based Affect and Workload Recognition in a Virtual Driving Environment for ASD Intervention |
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