Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features
This paper presents a classification system to classify the cognitive load corresponding to targets and distractors present in opposite visual hemifields. The approach includes the study of EEG (electroencephalogram) signal features acquired in a spatial attention task. The process comprises of EEG...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Hindawi Limited
2018-01-01
|
Series: | Journal of Healthcare Engineering |
Online Access: | http://dx.doi.org/10.1155/2018/9213707 |
id |
doaj-083ce17c338541ffb0656b8f1361e9ca |
---|---|
record_format |
Article |
spelling |
doaj-083ce17c338541ffb0656b8f1361e9ca2020-11-25T00:52:33ZengHindawi LimitedJournal of Healthcare Engineering2040-22952040-23092018-01-01201810.1155/2018/92137079213707Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG FeaturesSweeti0Deepak Joshi1B. K. Panigrahi2Sneh Anand3Jayasree Santhosh4Centre for Biomedical Engineering, IIT Delhi, New Delhi, IndiaCentre for Biomedical Engineering, IIT Delhi, New Delhi, IndiaDepartment of Electrical Engineering, IIT Delhi, New Delhi, IndiaCentre for Biomedical Engineering, IIT Delhi, New Delhi, IndiaDepartment of Computer Engineering & Computer Science, Manipal International University, Putra Nilai, MalaysiaThis paper presents a classification system to classify the cognitive load corresponding to targets and distractors present in opposite visual hemifields. The approach includes the study of EEG (electroencephalogram) signal features acquired in a spatial attention task. The process comprises of EEG feature selection based on the feature distribution, followed by the stepwise discriminant analysis- (SDA-) based channel selection. Repeated measure analysis of variance (rANOVA) is applied to test the statistical significance of the selected features. Classifiers are developed and compared using the selected features to classify the target and distractor present in visual hemifields. The results provide a maximum classification accuracy of 87.2% and 86.1% and an average classification accuracy of 76.5 ± 4% and 76.2 ± 5.3% over the thirteen subjects corresponding to the two task conditions. These correlates present a step towards building a feature-based neurofeedback system for visual attention.http://dx.doi.org/10.1155/2018/9213707 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sweeti Deepak Joshi B. K. Panigrahi Sneh Anand Jayasree Santhosh |
spellingShingle |
Sweeti Deepak Joshi B. K. Panigrahi Sneh Anand Jayasree Santhosh Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features Journal of Healthcare Engineering |
author_facet |
Sweeti Deepak Joshi B. K. Panigrahi Sneh Anand Jayasree Santhosh |
author_sort |
Sweeti |
title |
Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features |
title_short |
Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features |
title_full |
Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features |
title_fullStr |
Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features |
title_full_unstemmed |
Classification of Targets and Distractors Present in Visual Hemifields Using Time-Frequency Domain EEG Features |
title_sort |
classification of targets and distractors present in visual hemifields using time-frequency domain eeg features |
publisher |
Hindawi Limited |
series |
Journal of Healthcare Engineering |
issn |
2040-2295 2040-2309 |
publishDate |
2018-01-01 |
description |
This paper presents a classification system to classify the cognitive load corresponding to targets and distractors present in opposite visual hemifields. The approach includes the study of EEG (electroencephalogram) signal features acquired in a spatial attention task. The process comprises of EEG feature selection based on the feature distribution, followed by the stepwise discriminant analysis- (SDA-) based channel selection. Repeated measure analysis of variance (rANOVA) is applied to test the statistical significance of the selected features. Classifiers are developed and compared using the selected features to classify the target and distractor present in visual hemifields. The results provide a maximum classification accuracy of 87.2% and 86.1% and an average classification accuracy of 76.5 ± 4% and 76.2 ± 5.3% over the thirteen subjects corresponding to the two task conditions. These correlates present a step towards building a feature-based neurofeedback system for visual attention. |
url |
http://dx.doi.org/10.1155/2018/9213707 |
work_keys_str_mv |
AT sweeti classificationoftargetsanddistractorspresentinvisualhemifieldsusingtimefrequencydomaineegfeatures AT deepakjoshi classificationoftargetsanddistractorspresentinvisualhemifieldsusingtimefrequencydomaineegfeatures AT bkpanigrahi classificationoftargetsanddistractorspresentinvisualhemifieldsusingtimefrequencydomaineegfeatures AT snehanand classificationoftargetsanddistractorspresentinvisualhemifieldsusingtimefrequencydomaineegfeatures AT jayasreesanthosh classificationoftargetsanddistractorspresentinvisualhemifieldsusingtimefrequencydomaineegfeatures |
_version_ |
1725241808327278592 |