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Spatiotemporal beamforming: a transparent and unified decoding approach to synchronous visual Brain-Computer Interfacing

机译:时空波束成形:同步视觉脑计算机接口的透明统一解码方法

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摘要

Brain-Computer Interfaces (BCIs) decode brain activity with the aim to establish a direct communication channel with an external device. Albeit they have been hailed to (re-)establish communication in persons suffering from severe motor- and/or communication disabilities, only recently BCI applications have been challenging other assistive technologies. Owing to their considerably increased performance and the advent of affordable technological solutions, BCI technology is expected to trigger a paradigm shift not only in assistive technology but also in the way we will interface with technology. However, the flipside of the quest for accuracy and speed is most evident in EEG-based visual BCI where it has led to a gamut of increasingly complex classifiers, tailored to the needs of specific stimulation paradigms and use contexts. In this contribution, we argue that spatiotemporal beamforming can serve several synchronous visual BCI paradigms. We demonstrate this for three popular visual paradigms even without attempting to optimizing their electrode sets. For each selectable target, a spatiotemporal beamformer is applied to assess whether the corresponding signal-of-interest is present in the preprocessed multichannel EEG signals. The target with the highest beamformer output is then selected by the decoder (maximum selection). In addition to this simple selection rule, we also investigated whether interactions between beamformer outputs could be employed to increase accuracy by combining the outputs for all targets into a feature vector and applying three common classification algorithms. The results show that the accuracy of spatiotemporal beamforming with maximum selection is at par with that of the classification algorithms and interactions between beamformer outputs do not further improve that accuracy.
机译:脑机接口(BCI)对脑活动进行解码,目的是与外部设备建立直接的沟通渠道。尽管他们被要求在严重的运动和/或通讯障碍者中(重新)建立通讯,但直到最近BCI的应用才对其他辅助技术提出了挑战。由于BCI技术的显着提高的性能以及可负担得起的技术解决方案的出现,预计BCI技术不仅会触发辅助技术的范式转变,而且还会触发我们与技术交互的方式。然而,在基于EEG的视觉BCI中,对准确性和速度的追求的反面是最明显的,它导致了越来越复杂的分类器,这些分类器是针对特定刺激范例和使用环境的需求量身定制的。在这一贡献中,我们认为时空波束成形可以服务于几种同步视觉BCI范例。即使没有尝试优化其电极组,我们也针对三种流行的视觉范例进行了演示。对于每个可选目标,使用时空波束形成器来评估在预处理的多通道EEG信号中是否存在相应的目标信号。然后由解码器选择波束形成器输出最高的目标(最大选择)。除了这个简单的选择规则之外,我们还研究了是否可以通过将所有目标的输出组合到特征向量中并应用三种常见的分类算法,来利用波束形成器输出之间的相互作用来提高准确性。结果表明,时空波束形成的最大选择精度与分类算法的精度相当,并且波束形成器输出之间的交互并不能进一步提高该精度。

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