Abstract:
Fatigue is a well recognized safety concern for drivers and other industrial workers who must stay alert and attentive for long periods of time. Currently, drowsiness det...Show MoreMetadata
Abstract:
Fatigue is a well recognized safety concern for drivers and other industrial workers who must stay alert and attentive for long periods of time. Currently, drowsiness detectors using EEG technology exist but are cumbersome and unreliable. The large number of standard EEG channels requires extensive wiring, while the conventional wet electrodes cause discomfort in long-term monitoring. We propose a simple and cheap one-channel drowsiness detection technology suitable for detecting drowsiness in a variety of environments. Our design incorporates pronged dry-AgCl electrodes in a headband harness, which eliminates the discomfort of gel electrodes while obtaining strong signals from hair covered areas of the scalp. The electrodes send signals to a wireless base unit which then transfers the signal to a computer where it is analyzed using an unique algorithm. With solely this one-channel system, we obtained strong EEG signals from which alpha, beta and theta waves can be observed.
Published in: 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society
Date of Conference: 30 August 2011 - 03 September 2011
Date Added to IEEE Xplore: 01 December 2011
ISBN Information:
ISSN Information:
PubMed ID: 22255044
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- IEEE Keywords
- Index Terms
- Drowsiness Detection ,
- Long-term Monitoring ,
- Industrial Workers ,
- Alpha Rhythm ,
- Theta Rhythm ,
- Beta Waves ,
- Unified Algorithm ,
- Scalp Areas ,
- Electrode Gel ,
- Standard EEG ,
- Wet Electrodes ,
- Predictive Value ,
- Signal Processing ,
- Brain Activity ,
- Positive Predictive Value ,
- Negative Predictive Value ,
- Heart Rate Variability ,
- Signal Quality ,
- Active Electrode ,
- Analog Signal ,
- Dry Electrodes ,
- Ability Of The Algorithm ,
- Bluetooth Module ,
- Highest Predictive Value ,
- External Computer
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Drowsiness Detection ,
- Long-term Monitoring ,
- Industrial Workers ,
- Alpha Rhythm ,
- Theta Rhythm ,
- Beta Waves ,
- Unified Algorithm ,
- Scalp Areas ,
- Electrode Gel ,
- Standard EEG ,
- Wet Electrodes ,
- Predictive Value ,
- Signal Processing ,
- Brain Activity ,
- Positive Predictive Value ,
- Negative Predictive Value ,
- Heart Rate Variability ,
- Signal Quality ,
- Active Electrode ,
- Analog Signal ,
- Dry Electrodes ,
- Ability Of The Algorithm ,
- Bluetooth Module ,
- Highest Predictive Value ,
- External Computer
- Author Keywords
- MeSH Terms