论文标题
基于变压器的架构的时空分析,以供脑电图估算注意力
Spatio-Temporal Analysis of Transformer based Architecture for Attention Estimation from EEG
论文作者
论文摘要
多年来,了解大脑机制一直是许多不同领域的一个很好的研究主题。脑信号处理,尤其是脑电图处理(EEG)最近知道对学术界和工业的兴趣日益增长。主要例子之一是旨在连接大脑和计算机的脑部计算机界面(BCI)数量的增加。在本文中,我们提出了一个新颖的框架,使我们能够从EEG信号中检索注意力状态,即对特定任务的关注程度。尽管以前的方法通常通过电极考虑EEG中的空间关系,并以经常性或基于卷积的架构进行处理,但我们在这里建议还使用基于变压器的网络来利用空间和时间信息,该网络已经在许多机器学习(ML)相关研究(例如。机器翻译。除了这种新颖的体系结构外,还对特征提取方法进行了广泛的研究,还进行了频繁的频带和颞窗长度。与最先进的模型相比,提出的网络已在两个公共数据集上进行了培训和验证,并获得了更高的结果。除了提出更好的结果外,该框架还可以用于实际应用中,例如注意力缺陷多动症(ADHD)症状或驾驶评估期间的警惕性。
For many years now, understanding the brain mechanism has been a great research subject in many different fields. Brain signal processing and especially electroencephalogram (EEG) has recently known a growing interest both in academia and industry. One of the main examples is the increasing number of Brain-Computer Interfaces (BCI) aiming to link brains and computers. In this paper, we present a novel framework allowing us to retrieve the attention state, i.e degree of attention given to a specific task, from EEG signals. While previous methods often consider the spatial relationship in EEG through electrodes and process them in recurrent or convolutional based architecture, we propose here to also exploit the spatial and temporal information with a transformer-based network that has already shown its supremacy in many machine-learning (ML) related studies, e.g. machine translation. In addition to this novel architecture, an extensive study on the feature extraction methods, frequential bands and temporal windows length has also been carried out. The proposed network has been trained and validated on two public datasets and achieves higher results compared to state-of-the-art models. As well as proposing better results, the framework could be used in real applications, e.g. Attention Deficit Hyperactivity Disorder (ADHD) symptoms or vigilance during a driving assessment.