An Approach to Automatic Driver Sleep Detection

Jerzy J. KORCZAK, Aleksandra H. PASIECZNA

Abstract


This paper presents an approach to automatic sleep detection using electroencephalogram signals as a differentiating basis. The multi-layer perceptron and the support vector machine models are developed and analyzed with training and testing datasets. The results are evaluated using a cross-validation technique and compared with manual classification hypnogram tables. The models are very successful with sleep stage detection reaching up to 94%, and Cohen's index reaching up to 0.68, showing considerable promise for deployment and future studies.

Keywords


Sleep detection, Sleep classification, Machine learning, EEG

Publication Date


2016-11-17 00:00:00


DOI
10.12783/dtcse/cmsam2016/3618

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