Sparse Common Spatial Pattern for EEG Channel Reduction in Brain-Computer Interfaces

A. Jiang, Qing Wang, Jing Shang, Xiaofeng Liu
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引用次数: 7

Abstract

Common spatial pattern (CSP) is widely used in brain-computer interfaces (BCIs) to extract features from the multichannel EEG signals. However, the CSP method easily overfits to the data of small training sets and its performance can be degraded by highly noisy and interference channels. Furthermore, more recording channels imply more processing and computation time in practical applications. To overcome these drawbacks, in this paper we propose a novel sparse CSP algorithm by introducing sparsity into spatial filters. The proposed method adopts $l_{1}$ norm as sparsity metric and constrains the ratio between variances of spatially filtered EEG signals of two classes larger than a specified threshold. To improve computational efficiency, an iterative approach based on general eigenvalue decomposition is further developed. The experimental results on 9 subjects from BCI competition datasets publicly available demonstrate that the proposed algorithm can achieve comparable classification accuracy even when the number of channels is small.
基于稀疏公共空间模式的脑机接口脑电信号信道缩减
公共空间模式(Common spatial pattern, CSP)被广泛应用于脑机接口(bci)中,从多通道脑电信号中提取特征。然而,CSP方法容易对小训练集的数据过拟合,并且在高噪声和干扰信道下性能下降。此外,在实际应用中,更多的记录通道意味着更多的处理和计算时间。为了克服这些缺点,本文通过在空间滤波器中引入稀疏性,提出了一种新的稀疏CSP算法。该方法采用$l_{1}$范数作为稀疏度度量,约束空间滤波后两类脑电信号的方差之比大于指定阈值。为了提高计算效率,进一步提出了一种基于一般特征值分解的迭代方法。对9个公开的BCI竞争数据集的实验结果表明,该算法在通道数较少的情况下也能达到相当的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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