Zander Thorsten O, Andreessen Lena M, Berg Angela, Bleuel Maurice, Pawlitzki Juliane, Zawallich Lars, Krol Laurens R, Gramann Klaus
Biological Psychology and Neuroergonomics, Technical University of BerlinBerlin, Germany; Team PhyPA, Biological Psychology and Neuroergonomics, Technical University BerlinBerlin, Germany.
Biological Psychology and Neuroergonomics, Technical University of Berlin Berlin, Germany.
Front Hum Neurosci. 2017 Feb 28;11:78. doi: 10.3389/fnhum.2017.00078. eCollection 2017.
We tested the applicability and signal quality of a 16 channel dry electroencephalography (EEG) system in a laboratory environment and in a car under controlled, realistic conditions. The aim of our investigation was an estimation how well a passive Brain-Computer Interface (pBCI) can work in an autonomous driving scenario. The evaluation considered speed and accuracy of self-applicability by an untrained person, quality of recorded EEG data, shifts of electrode positions on the head after driving-related movements, usability, and complexity of the system as such and wearing comfort over time. An experiment was conducted inside and outside of a stationary vehicle with running engine, air-conditioning, and muted radio. Signal quality was sufficient for standard EEG analysis in the time and frequency domain as well as for the use in pBCIs. While the influence of vehicle-induced interferences to data quality was insignificant, driving-related movements led to strong shifts in electrode positions. In general, the EEG system used allowed for a fast self-applicability of cap and electrodes. The assessed usability of the system was still acceptable while the wearing comfort decreased strongly over time due to friction and pressure to the head. From these results we conclude that the evaluated system should provide the essential requirements for an application in an autonomous driving context. Nevertheless, further refinement is suggested to reduce shifts of the system due to body movements and increase the headset's usability and wearing comfort.
我们在实验室环境以及在可控的实际条件下的汽车中测试了一款16通道干式脑电图(EEG)系统的适用性和信号质量。我们研究的目的是评估被动式脑机接口(pBCI)在自动驾驶场景中的工作效果。评估内容包括未经训练的人自行佩戴的速度和准确性、记录的EEG数据质量、驾驶相关动作后头部电极位置的偏移、系统的可用性和复杂性以及长时间佩戴的舒适度。实验在一辆发动机运转、开着空调且收音机静音的静止车辆内外进行。信号质量对于时域和频域的标准EEG分析以及在pBCI中的应用而言是足够的。虽然车辆产生的干扰对数据质量的影响微不足道,但驾驶相关动作导致电极位置发生明显偏移。总体而言,所使用的EEG系统允许快速自行佩戴头帽和电极。该系统的可用性评估结果仍可接受,不过由于头部受到摩擦和压力,佩戴舒适度会随着时间大幅下降。从这些结果我们得出结论,所评估的系统应能满足在自动驾驶环境中应用的基本要求。然而,建议进一步改进以减少因身体动作导致的系统偏移,并提高头戴设备的可用性和佩戴舒适度。