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...

Full description

Bibliographic Details
Main Authors: Golz Martin, Wollner Sebastian, Sommer David, Schnieder Sebastian
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