Publication | Closed Access
Real time workload classification from an ambulatory wireless EEG system using hybrid EEG electrodes
63
Citations
5
References
2008
Year
Unknown Venue
Wearable SystemEngineeringWearable TechnologyWireless Implantable DeviceKinesiologyMechanical IsolationWorkload CharacterizationEeg SystemHybrid Eeg ElectrodesSubject WorkloadAssistive TechnologyComputer EngineeringNeuroimagingRehabilitationBrain-computer InterfaceEeg Signal ProcessingBioelectronicsBrain ElectrophysiologyElectrophysiologyBraincomputer InterfaceMedicineWearable Sensor
This paper describes a compact, lightweight and ultra-low power ambulatory wireless EEG system based upon QUASAR's innovative noninvasive bioelectric sensor technologies. The sensors operate through hair without skin preparation or conductive gels. Mechanical isolation built into the harness permits the recording of high quality EEG data during ambulation. Advanced algorithms developed for this system permit real time classification of workload during subject motion. Measurements made using the EEG system during ambulation are presented, including results for real time classification of subject workload.
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