Norizadeh Cherloo Mohammad, Kashefi Amiri Homa, Mijani Amir Mohammad, Zhan Liang, Daliri Mohammad Reza
Biomedical Engineering Department, School of Electrical Engineering, Iran University of Science and Technology (IUST), Narmak, Tehran, 16846-13114, Iran.
Artificial Intelligence Department, School of Computer Engineering, Iran University of Science and Technology (IUST), Narmak, Tehran, 16846-13114, Iran.
Behav Res Methods. 2025 Jun 9;57(7):196. doi: 10.3758/s13428-025-02710-6.
Recently, SSVEP-based brain-computer interfaces (BCIs) have received increasing attention from researchers due to their high signal-to-noise ratios (SNR), high information transfer rates (ITR), and low user training. Therefore, various methods have been proposed to recognize the frequency of SSVEPs. This paper reviewed the state-of-the-art frequency detection methods in SSVEP-based BCIs. Nineteen multi-channel SSVEP detection methods, organized into four categories based on different analytical approaches, were studied. All methods are template-based approaches and classified into four groups according to the basic models they employ: canonical correlation analysis (CCA), multivariate synchronization index (MSI), task-related component analysis (TRCA), and correlated component analysis (CORRCA). Each group consists of methods that use one of these basic models as the core model for their approach. This paper provides a description, a clear flowchart, and MATLAB code for each method and helps researchers use or develop the existing SSVEP detection methods. Although all methods were evaluated in separate studies, a comprehensive comparison of methods is still missing. In this study, several experiments were conducted to assess the performance of SSVEP detection methods. The benchmark 40-class SSVEP dataset from 35 subjects was used to evaluate methods. All methods were applied to the dataset and were evaluated in terms of classification accuracy, information transfer rate (ITR), and computational time. The experiment results revealed that four factors efficiently design an accurate, robust SSVEP detection method. (1) employing filter bank analysis to incorporate fundamental and harmonics frequency components, (2) utilizing calibration data to construct optimized reference signals, (3) integrating spatial filters of all stimuli to construct classification features, and (4) calculating spatial filters using training trials. Furthermore, results showed that filter bank ensemble task-related components (FBETRCA) achieved the highest performance.
近年来,基于稳态视觉诱发电位(SSVEP)的脑机接口(BCI)因其高信噪比(SNR)、高信息传输率(ITR)和低用户训练要求而受到研究人员越来越多的关注。因此,人们提出了各种方法来识别SSVEP的频率。本文综述了基于SSVEP的BCI中最先进的频率检测方法。研究了19种多通道SSVEP检测方法,这些方法根据不同的分析方法分为四类。所有方法均为基于模板的方法,并根据其采用的基本模型分为四组:典型相关分析(CCA)、多元同步指数(MSI)、任务相关成分分析(TRCA)和相关成分分析(CORRCA)。每组方法都使用这些基本模型之一作为其方法的核心模型。本文为每种方法提供了描述、清晰的流程图和MATLAB代码,有助于研究人员使用或开发现有的SSVEP检测方法。尽管所有方法都在单独的研究中进行了评估,但仍缺乏对这些方法的全面比较。在本研究中,进行了几个实验来评估SSVEP检测方法的性能。使用来自35名受试者的基准40类SSVEP数据集来评估方法。所有方法都应用于该数据集,并根据分类准确率、信息传输率(ITR)和计算时间进行评估。实验结果表明,有四个因素能有效地设计出一种准确、稳健的SSVEP检测方法。(1)采用滤波器组分析来纳入基波和谐波频率成分;(2)利用校准数据构建优化的参考信号;(3)整合所有刺激的空间滤波器以构建分类特征;(4)使用训练试验计算空间滤波器。此外,结果表明滤波器组集成任务相关成分(FBETRCA)取得了最高性能。