论文标题

用于基于脑电图的脑部计算机界面的暹罗神经网络

Siamese Neural Networks for EEG-based Brain-computer Interfaces

论文作者

Shahtalebi, Soroosh, Asif, Amir, Mohammadi, Arash

论文摘要

由人脑在同时处理多模式信号及其对外界事件的实时反馈中的不可思议的能力的推动下,人们对建立人脑和计算机之间的通信桥梁的兴趣激增,这被称为脑部计算机界面(BCI)。为此,通过脑电图(EEG)监测大脑的电活动已成为BCI系统的主要选择。为了发现针对不同心理任务的大脑信号的基本和特定特征,根据统计和数据驱动技术开发了大量的研究工作。但是,当增加的分类心理任务数量增加时,实用和商业BCI系统开发的主要瓶颈是它们的有限性能。在这项工作中,我们提出了一种基于暹罗神经网络的新的脑电图处理和功能提取范式,可以方便地合并并扩大用于多级问题的问题。暹罗网络的想法是基于对比度损失功能训练双输入神经网络,该网络提供了验证是否验证两个输入EEG试验的能力。在这项工作中,基于卷积神经网络(CNN)开发的暹罗体系结构,并提供了两个输入相似性的二进制输出,与OVR和OVO技术相结合,以扩大多个级别的问题。该体系结构的功效是在BCI竞争IV-2A的4级运动图像(MI)数据集上进行评估的,结果表明与其对应物相比具有令人鼓舞的性能。

Motivated by the inconceivable capability of the human brain in simultaneously processing multi-modal signals and its real-time feedback to the outer world events, there has been a surge of interest in establishing a communication bridge between the human brain and a computer, which are referred to as Brain-computer Interfaces (BCI). To this aim, monitoring the electrical activity of brain through Electroencephalogram (EEG) has emerged as the prime choice for BCI systems. To discover the underlying and specific features of brain signals for different mental tasks, a considerable number of research works are developed based on statistical and data-driven techniques. However, a major bottleneck in the development of practical and commercial BCI systems is their limited performance when the number of mental tasks for classification is increased. In this work, we propose a new EEG processing and feature extraction paradigm based on Siamese neural networks, which can be conveniently merged and scaled up for multi-class problems. The idea of Siamese networks is to train a double-input neural network based on a contrastive loss-function, which provides the capability of verifying if two input EEG trials are from the same class or not. In this work, a Siamese architecture, which is developed based on Convolutional Neural Networks (CNN) and provides a binary output on the similarity of two inputs, is combined with OVR and OVO techniques to scale up for multi-class problems. The efficacy of this architecture is evaluated on a 4-class Motor Imagery (MI) dataset from BCI Competition IV-2a and the results suggest a promising performance compared to its counterparts.

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