EOG feature relevance determination for microsleep detection
Automatic relevance determination (ARD) was applied to two-channel EOG recordings for microsleep event (MSE) recognition. 10 s immediately before MSE and also before counterexamples of fatigued, but attentive driving were analysed. Two type of signal features were extracted: the maximum cross correl...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
De Gruyter
2017-09-01
|
Series: | Current Directions in Biomedical Engineering |
Subjects: | |
Online Access: | https://doi.org/10.1515/cdbme-2017-0172 |
id |
doaj-c9bfbffaed4a4fdda7402475c9be443f |
---|---|
record_format |
Article |
spelling |
doaj-c9bfbffaed4a4fdda7402475c9be443f2021-09-06T19:19:25ZengDe GruyterCurrent Directions in Biomedical Engineering2364-55042017-09-013281581810.1515/cdbme-2017-0172cdbme-2017-0172EOG feature relevance determination for microsleep detectionGolz Martin0Wollner Sebastian1Sommer David2Schnieder Sebastian3University of Applied Sciences Schmalkalden, GermanyUniversity of Applied Sciences SchmalkaldenUniversity of Applied Sciences SchmalkaldenInstitute of Experimental Psychophysio-logy GmbH, Düsseldorf, GermanyAutomatic relevance determination (ARD) was applied to two-channel EOG recordings for microsleep event (MSE) recognition. 10 s immediately before MSE and also before counterexamples of fatigued, but attentive driving were analysed. Two type of signal features were extracted: the maximum cross correlation (MaxCC) and logarithmic power spectral densities (PSD) averaged in spectral bands of 0.5 Hz width ranging between 0 and 8 Hz. Generalised learn-ing vector quantisation (GRLVQ) was used as ARD method to show the potential of feature reduction. This is compared to support-vector machines (SVM), in which the feature reduction plays a much smaller role. Cross validation yielded mean normalised relevancies of PSD features in the range of 1.6 - 4.9 % and 1.9 - 10.4 % for horizontal and vertical EOG, respectively. MaxCC relevancies were 0.002 - 0.006 % and 0.002 - 0.06 %, respectively. This shows that PSD features of vertical EOG are indispensable, whereas MaxCC can be neglected. Mean classification accuracies were estimated at 86.6±b 1.3 % and 92.3±b 0.2 % for GRLVQ and SVM, respec-tively. GRLVQ permits objective feature reduction by inclu-sion of all processing stages, but is not as accurate as SVM.https://doi.org/10.1515/cdbme-2017-0172automatic relevance determinationmicrosleepelectrooculographysupport-vector machines |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Golz Martin Wollner Sebastian Sommer David Schnieder Sebastian |
spellingShingle |
Golz Martin Wollner Sebastian Sommer David Schnieder Sebastian EOG feature relevance determination for microsleep detection Current Directions in Biomedical Engineering automatic relevance determination microsleep electrooculography support-vector machines |
author_facet |
Golz Martin Wollner Sebastian Sommer David Schnieder Sebastian |
author_sort |
Golz Martin |
title |
EOG feature relevance determination for microsleep detection |
title_short |
EOG feature relevance determination for microsleep detection |
title_full |
EOG feature relevance determination for microsleep detection |
title_fullStr |
EOG feature relevance determination for microsleep detection |
title_full_unstemmed |
EOG feature relevance determination for microsleep detection |
title_sort |
eog feature relevance determination for microsleep detection |
publisher |
De Gruyter |
series |
Current Directions in Biomedical Engineering |
issn |
2364-5504 |
publishDate |
2017-09-01 |
description |
Automatic relevance determination (ARD) was applied to two-channel EOG recordings for microsleep event (MSE) recognition. 10 s immediately before MSE and also before counterexamples of fatigued, but attentive driving were analysed. Two type of signal features were extracted: the maximum cross correlation (MaxCC) and logarithmic power spectral densities (PSD) averaged in spectral bands of 0.5 Hz width ranging between 0 and 8 Hz. Generalised learn-ing vector quantisation (GRLVQ) was used as ARD method to show the potential of feature reduction. This is compared to support-vector machines (SVM), in which the feature reduction plays a much smaller role. Cross validation yielded mean normalised relevancies of PSD features in the range of 1.6 - 4.9 % and 1.9 - 10.4 % for horizontal and vertical EOG, respectively. MaxCC relevancies were 0.002 - 0.006 % and 0.002 - 0.06 %, respectively. This shows that PSD features of vertical EOG are indispensable, whereas MaxCC can be neglected. Mean classification accuracies were estimated at 86.6±b 1.3 % and 92.3±b 0.2 % for GRLVQ and SVM, respec-tively. GRLVQ permits objective feature reduction by inclu-sion of all processing stages, but is not as accurate as SVM. |
topic |
automatic relevance determination microsleep electrooculography support-vector machines |
url |
https://doi.org/10.1515/cdbme-2017-0172 |
work_keys_str_mv |
AT golzmartin eogfeaturerelevancedeterminationformicrosleepdetection AT wollnersebastian eogfeaturerelevancedeterminationformicrosleepdetection AT sommerdavid eogfeaturerelevancedeterminationformicrosleepdetection AT schniedersebastian eogfeaturerelevancedeterminationformicrosleepdetection |
_version_ |
1717778646021701632 |