混合动力系统在汽车驾驶场景中促进基于脑电图的实时动作解码

G. Vecchiato
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引用次数: 4

摘要

驾驶背后并发大脑过程的复杂性使得这种人类行为成为神经工效学中研究最多的现实世界活动之一。人们已经进行了几次尝试,无论是离线还是在线,解码汽车驾驶过程中的大脑活动,最终目标是为辅助设备开发基于大脑的系统。脑电图(EEG)是这些研究的基石,它提供了最高的时间分辨率来跟踪那些隐藏在显性行为背后的大脑过程。特别是在研究现实场景(如驾驶)时,EEG受到鲁棒性、舒适性和影响解码性能的高数据可变性等因素的限制。因此,额外的外围信号可以与脑电图相结合,以增加可复制性和基于大脑的动作解码器的整体性能。在这方面,已经提出了混合系统来检测驾驶场景中的制动和转向动作,以提高单一神经生理测量的预测能力。这些最近的结果证明了技术成熟程度的概念。它们可能会为提高外围信号的预测能力铺平道路,例如,当EEG测量结果提供信息时,在现实场景中收集的电图(EOG)和肌电图(EMG),即使只是在标准实验室环境下离线收集。在神经工效学的其他领域应该进一步研究这种混合系统的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Systems to Boost EEG-Based Real-Time Action Decoding in Car Driving Scenarios
The complexity of concurrent cerebral processes underlying driving makes such human behavior one of the most studied real-world activities in neuroergonomics. Several attempts have been made to decode, both offline and online, cerebral activity during car driving with the ultimate goal to develop brain-based systems for assistive devices. Electroencephalography (EEG) is the cornerstone of these studies providing the highest temporal resolution to track those cerebral processes underlying overt behavior. Particularly when investigating real-world scenarios as driving, EEG is constrained by factors such as robustness, comfortability, and high data variability affecting the decoding performance. Hence, additional peripheral signals can be combined with EEG for increasing replicability and the overall performance of the brain-based action decoder. In this regard, hybrid systems have been proposed for the detection of braking and steering actions in driving scenarios to improve the predictive power of the single neurophysiological measurement. These recent results represent a proof of concept of the level of technological maturity. They may pave the way for increasing the predictive power of peripheral signals, such as electroculogram (EOG) and electromyography (EMG), collected in real-world scenarios when informed by EEG measurements, even if collected only offline in standard laboratory settings. The promising usability of such hybrid systems should be further investigated in other domains of neuroergonomics.
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