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Data Analytics in Steady-State Visual Evoked Potential-Based Brain–Computer Interface: A Review

机译:基于稳态视觉诱发潜在脑电器界面的数据分析:综述

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摘要

Electroencephalograph (EEG) has been widely applied for brain-computer interface (BCI) which enables paralyzed people to directly communicate with and control external devices, due to its portability, high temporal resolution, ease of use and low cost. Of various EEG paradigms, steady-state visual evoked potential (SSVEP)-based BCI system which uses multiple visual stimuli (such as LEDs or boxes on a computer screen) flickering at different frequencies has been widely explored in the past decades due to its fast communication rate and high signal-to-noise ratio. In this article, we review the current research in SSVEP-based BCI, focusing on the data analytics that enables continuous, accurate detection of SSVEPs and thus high information transfer rate. The main technical challenges, including signal pre-processing, spectrum analysis, signal decomposition, spatial filtering in particular canonical correlation analysis and its variations, and classification techniques are described in this article. Research challenges and opportunities in spontaneous brain activities, mental fatigue, transfer learning as well as hybrid BCI are also discussed.
机译:脑电图(EEG)已广泛应用于脑电脑界面(BCI),这使得瘫痪的人能够直接与外部设备直接通信,由于其便携性,高的时间分辨率,易用性和低成本。在各种EEG范例中,在过去的几十年中,在过去的几十年中,在过去的几十年中,在不同频率下闪烁的稳态视觉诱发电位(如电脑屏幕上的LED或盒子)的BCI系统已经迅速探讨。通信率和高信噪比。在本文中,我们审查了基于SSVEP的BCI的当前研究,专注于能够连续,准确地检测SSVEP的数据分析以及高信息传输速率。本文描述了主要技术挑战,包括信号预处理,频谱分析,信号分解,特定规范相关分析及其变化的空间滤波,以及分类技术。还讨论了自发大脑活动,精神疲劳,转移学习以及混合BCI的研究挑战和机遇。

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