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基于 SSVEP 的脑-机接口中空间滤波器设计的最大似然视角。

A Maximum Likelihood Perspective of Spatial Filter Design in SSVEP-Based BCIs.

出版信息

IEEE Trans Biomed Eng. 2021 Sep;68(9):2706-2717. doi: 10.1109/TBME.2021.3049853. Epub 2021 Aug 19.

DOI:10.1109/TBME.2021.3049853
PMID:33417535
Abstract

In steady-state visual-evoked potential (SSVEP) based brain-computer interfaces (BCIs), existing detection algorithms utilizing spatial filters like task-related component analysis (TRCA) derive the spatial filters mainly through maximizing the inter-trial similarity between the combined signals over the training set. Although they achieve by far the best classification performance in SSVEP-based BCIs, some important problems are still unresolved. Especially, the mechanism of how spatial filters cancel the background noise in brain signals and optimize the signal-to-noise ratio (SNR) of SSVEPs is still not figured out. Therefore, to solve these problems, in this paper a new perspective of spatial filter design is proposed. Specifically, a linear generative signal model of SSVEP is adopted and the spatial filters are obtained automatically through maximum likelihood estimation of source signals and channel vectors. In the same time, the relation between maximum likelihood estimation and signal-to-noise ratio (SNR) maximization is discussed. Through a step-by-step formulation, this paper provides a theoretical justification for those conventional algorithms utilizing spatial filters. As for the classification performance, the proposed scheme is tested on a benchmark dataset of 35 subjects. Experiment results show that the classification performance of the proposed scheme is competitive against three benchmark algorithms, which include TRCA. Especially, the proposed scheme achieves a fair performance improvement over the benchmark methods in the cases where a shorter time window, or a larger number of electrodes, or a smaller number of training blocks are adopted.

摘要

在稳态视觉诱发电位 (SSVEP) 脑机接口 (BCI) 中,现有的利用空间滤波器(如任务相关成分分析 (TRCA))的检测算法主要通过最大化训练集上组合信号的试验间相似性来推导出空间滤波器。虽然它们在基于 SSVEP 的 BCI 中实现了迄今为止最好的分类性能,但仍有一些重要问题尚未解决。特别是,空间滤波器如何消除脑信号中的背景噪声并优化 SSVEP 的信噪比 (SNR) 的机制仍未得到解决。因此,为了解决这些问题,本文提出了一种新的空间滤波器设计视角。具体来说,采用 SSVEP 的线性生成信号模型,通过源信号和通道向量的最大似然估计自动获得空间滤波器。同时,讨论了最大似然估计与信噪比 (SNR) 最大化的关系。通过逐步公式化,本文为利用空间滤波器的传统算法提供了理论依据。就分类性能而言,本文在 35 名受试者的基准数据集上进行了测试。实验结果表明,所提出的方案在分类性能上可与三种基准算法相媲美,包括 TRCA。特别是,在所采用的时间窗口较短、电极数量较多或训练块数量较少的情况下,所提出的方案相对于基准方法具有公平的性能提升。

相似文献

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A Maximum Likelihood Perspective of Spatial Filter Design in SSVEP-Based BCIs.基于 SSVEP 的脑-机接口中空间滤波器设计的最大似然视角。
IEEE Trans Biomed Eng. 2021 Sep;68(9):2706-2717. doi: 10.1109/TBME.2021.3049853. Epub 2021 Aug 19.
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引用本文的文献

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Med Biol Eng Comput. 2025 Feb;63(2):355-363. doi: 10.1007/s11517-024-03193-x. Epub 2024 Sep 24.
2
Driving Mode Selection through SSVEP-Based BCI and Energy Consumption Analysis.基于 SSVEP 的脑机接口和能耗分析的驾驶模式选择。
Sensors (Basel). 2022 Jul 28;22(15):5631. doi: 10.3390/s22155631.