Adoption of Machine Learning Techniques to Enhance Classification Performance in Reactive Brain-Computer Interfaces

Andrea Apicella, P. Arpaia, A. Cataldo, E. D. Benedetto, N. Donato, Luigi Duraccio, Salvatore Giugliano, R. Prevete
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Abstract

This paper proposes the adoption of an innovative algorithm to enhance the performance of highly wearable, reactive Brain-Computer Interfaces (BCIs), which exploit the Steady-State Visually Evoked Potential (SSVEP) paradigm. In particular, a combined time-domain/frequency-domain processing is performed in order to reduce the number of features of the brain signals acquired. Successively, these features are classified by means of an Artificial Neural Network (ANN) with a learnable activation function. In this way, the user intention can be translated into commands for external devices. The proposed algorithm was initially tested on a benchmark data set, composed by 35 subjects and 40 simultaneous flickering stimuli, obtaining performance comparable with the state of the art. Successively, the algorithm was also applied to a data set realized with highly wearable BCI equipment. In particular, (i) Augmented Reality (AR) smart glasses were used to generate the flickering stimuli necessary to the SSVEPs elicitation, and (ii) a single-channel EEG acquisition was conducted for each volunteer. The obtained results showed that the proposed strategy provides a significant enhancement in SSVEPs classification with respect to other state-of-the-art algorithms. This can contribute to improve reliability and usability of brain computer interfaces, thus favoring the adoption of this technology also in daily-life applications.
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采用机器学习技术提高反应性脑机接口的分类性能
本文提出采用一种创新算法来增强高度可穿戴的反应性脑机接口(bci)的性能,该接口利用稳态视觉诱发电位(SSVEP)范式。特别地,进行时域/频域联合处理以减少所获取的脑信号的特征数量。然后,利用具有可学习激活函数的人工神经网络(ANN)对这些特征进行分类。通过这种方式,可以将用户的意图转换为对外部设备的命令。该算法在由35名受试者和40个同步闪烁刺激组成的基准数据集上进行了初步测试,获得了与当前技术水平相当的性能。随后,将该算法应用于高可穿戴BCI设备实现的数据集。特别是,(i)使用增强现实(AR)智能眼镜来产生触发ssvep所需的闪烁刺激,(ii)对每个志愿者进行单通道EEG采集。得到的结果表明,相对于其他最先进的算法,所提出的策略在ssvep分类方面提供了显著的增强。这有助于提高脑机接口的可靠性和可用性,从而有利于在日常生活应用中采用该技术。
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