DocumentCode :
3728453
Title :
Efficient Labeling of EEG Signal Artifacts Using Active Learning
Author :
Vernon Lawhern;David Slayback;Dongrui Wu;Brent J. Lance
Author_Institution :
Translational Neurosci. Branch, US Army Res. Lab., Aberdeen Proving Ground, MD, USA
fYear :
2015
Firstpage :
3217
Lastpage :
3222
Abstract :
Electroencephalography (EEG) has been widely used in a variety of contexts, including medical monitoring of subjects as well as performance monitoring in healthy individuals. Recent technological advances have now enabled researchers to quickly record and collect EEG on a wide scale. Although EEG is fairly easy to record, it is highly susceptible to noise sources called artifacts which can occur at amplitudes several times greater than the EEG signal of interest. Because of this, users must manually annotate the EEG signal to identify artifact regions in the data prior to any downstream processing. This can be time-consuming and impractical for large data collections. In this paper we present a method which uses Active Learning (AL) to improve the reliability of existing EEG artifact classifiers with minimal amounts of user interaction. Our results show that classification accuracy equivalent to classifiers trained on full data annotation can be obtained while labeling less than 25% of the data. This suggests significant time savings can be obtained when manually annotating artifacts in large EEG data collections.
Keywords :
"Electroencephalography","Brain modeling","Labeling","Support vector machines","Electrooculography","Electromyography","Muscles"
Publisher :
ieee
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2015 IEEE International Conference on
Type :
conf
DOI :
10.1109/SMC.2015.558
Filename :
7379690
Link To Document :
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