Abstract

Electroencephalogram (EEG) registration as a direct measure of brain activity has unique potentials. It is one of the most reliable and predicative indicators when studying human cognition, evaluating a subject's health condition, or monitoring their mental state. Unfortunately, standard signal acquisition procedures limit the usability of EEG devices and narrow their application outside the lab. Emerging sensor technology allows gel-free EEG registration and wireless signal transmission. Thus, it enables quick and easy application of EEG devices by users themselves. Although a main requirement for the interpretation of an EEG is good signal quality, there is a lack of research on this topic in relation to new devices. In our work, we compared the signal quality of six very different EEG devices. On six consecutive days, 24 subjects wore each device for 60 min and completed tasks and games on the computer. The registered signals were evaluated in the time and frequency domains. In the time domain, we examined the percentage of artifact-contaminated EEG segments and the signal-to-noise ratios. In the frequency domain, we focused on the band power variation in relation to task demands. The results indicated that the signal quality of a mobile, gel-based EEG system could not be surpassed by that of a gel-free system. However, some of the mobile dry-electrode devices offered signals that were almost comparable and were very promising. This study provided a differentiated view of the signal quality of emerging mobile and gel-free EEG recording technology and allowed an assessment of the functionality of the new devices. Hence, it provided a crucial prerequisite for their general application, while simultaneously supporting their further development.

Highlights

  • Electroencephalogram (EEG) registration as a direct measurement of brain activity has unique potentials

  • To evaluate the signal quality, we examined the proportion of artifacts and signal-to-noise ratio of the devices in the time

  • Signal-to-Noise Ratio Before going into detail about the signal-to-noise ratio (SNR) results, it should be noted that the artifact subspace reconstruction (ASR) algorithm failed when examining the EEGs of four subjects that were recorded with the Trilobite device

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Summary

INTRODUCTION

Electroencephalogram (EEG) registration as a direct measurement of brain activity has unique potentials. A common way to achieve this is the registration of the EEG in a shielded lab and preparation of the subject’s skin before the electrodes are placed to reduce the impedance. These standard procedures limit the usability of an EEG device and narrow its application outside the lab. Signal Quality of EEG Devices from the electrode cap to an amplifier and computer These severely restrict a subject’s mobility and decrease user acceptance of the measuring technique. Emerging sensor technology allows gel-free EEG registration and enables quick and easy application of EEG devices by the users themselves. The obtained results build a crucial prerequisite for the general application of the emerging devices outside the lab and simultaneously support their further development

EEG Systems
Procedure and Subjects
Proportion of Artifacts
Signal-to-Noise Ratio
Evaluation in Frequency Domain
Evaluation in Time Domain
DISCUSSION AND CONCLUSION
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