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Bernard Grundlehner

Researcher at IMEC

Publications -  41
Citations -  1626

Bernard Grundlehner is an academic researcher from IMEC. The author has contributed to research in topics: Body area network & Wearable computer. The author has an hindex of 20, co-authored 41 publications receiving 1392 citations.

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Journal ArticleDOI

Wearable, Wireless EEG Solutions in Daily Life Applications: What are we Missing?

TL;DR: This work discussed state-of-the-art in wireless and wearable EEG solutions and a number of aspects where such solutions require improvements when handling electrical activity of the brain, including personal traits and sensory inputs, brain signal generation and acquisition, brain sign analysis, and feedback generation.
Journal ArticleDOI

A $160~\mu {\rm W}$ 8-Channel Active Electrode System for EEG Monitoring

TL;DR: In this paper, an active electrode system for gel-free biopotential EEG signal acquisition is presented, which consists of front-end chopper amplifiers and a back-end common-mode feedback (CMFB) circuit.
Journal ArticleDOI

Soft, Comfortable Polymer Dry Electrodes for High Quality ECG and EEG Recording

TL;DR: Dry electrodes offering high user comfort are presented, since they are fabricated from EPDM rubber containing various additives for optimum conductivity, flexibility and ease of fabrication, and EEG recordings using active polymer electrodes connected to a clinical EEG system show very promising results.
Proceedings ArticleDOI

Towards mental stress detection using wearable physiological sensors

TL;DR: A promising feature subset was found for future development of a personalized stress monitor and a consistent classification accuracy between stress and non stress conditions of almost 80% was found.
Proceedings ArticleDOI

Towards wireless emotional valence detection from EEG

TL;DR: A wireless EEG system is used to investigate the potential of monitoring emotional valence in EEG, for application in real-life situations and results show 82% accuracy for automatic classification of positive, negative and neutral valence based on film clip viewing.