论文标题
脑部计算机界面中脑电图分类的互动神经网络模型
An intertwined neural network model for EEG classification in brain-computer interfaces
论文作者
论文摘要
大脑计算机接口(BCI)是大脑与计算机或外部设备之间的非刺激性直接和偶尔双向通信链接。从经典上讲,基于脑电图的BCI算法依赖于支持向量机和线性判别分析或多类常见空间模式等模型。然而,在过去的十年中,更复杂的机器学习体系结构,例如卷积神经网络,经常性神经网络,长期短期记忆网络和封闭式复发单元网络,已广泛用于增强多功能BCI任务中的可区分性。此外,EEG信号的预处理和降解一直是大脑活动成功解码的关键,并且确定最佳和标准化的EEG预处理活动是一个积极的研究领域。在本文中,我们提出了专门设计的深神经网络架构a)在多类运动图像分类中提供最先进的性能,b)在从EEG和BCI设备流中进行实时处理原始数据时,保持了强大的预处理。它基于时间分配的完全连接(TDFC)和空间分布的1D时间卷积层(SDCONV)的相互交织的使用,并明确地解决了EEG信号的空间和时间特征的相互作用的可能性。数值实验表明,我们的体系结构基于3D卷积和六类运动图像网络中的3D卷积和反复神经网络的组合提供了优异的性能,其准确性达到99%。重要的是,当应用最少或广泛的预处理时,这些结果保持不变,这可能为在EEG分类中更横向和实时使用深度学习架构铺平了道路。
The brain computer interface (BCI) is a nonstimulatory direct and occasionally bidirectional communication link between the brain and a computer or an external device. Classically, EEG-based BCI algorithms have relied on models such as support vector machines and linear discriminant analysis or multiclass common spatial patterns. During the last decade, however, more sophisticated machine learning architectures, such as convolutional neural networks, recurrent neural networks, long short-term memory networks and gated recurrent unit networks, have been extensively used to enhance discriminability in multiclass BCI tasks. Additionally, preprocessing and denoising of EEG signals has always been key in the successful decoding of brain activity, and the determination of an optimal and standardized EEG preprocessing activity is an active area of research. In this paper, we present a deep neural network architecture specifically engineered to a) provide state-of-the-art performance in multiclass motor imagery classification and b) remain robust to preprocessing to enable real-time processing of raw data as it streams from EEG and BCI equipment. It is based on the intertwined use of time-distributed fully connected (tdFC) and space-distributed 1D temporal convolutional layers (sdConv) and explicitly addresses the possibility that interaction of spatial and temporal features of the EEG signal occurs at all levels of complexity. Numerical experiments demonstrate that our architecture provides superior performance compared baselines based on a combination of 3D convolutions and recurrent neural networks in a six-class motor imagery network, with a subjectwise accuracy that reaches 99%. Importantly, these results remain unchanged when minimal or extensive preprocessing is applied, possibly paving the way for a more transversal and real-time use of deep learning architectures in EEG classification.