IEEE Trans Cybern. 2019 Sep;49(9):3322-3332. doi: 10.1109/TCYB.2018.2841847. Epub 2018 Jun 14.
Common spatial pattern (CSP)-based spatial filtering has been most popularly applied to electroencephalogram (EEG) feature extraction for motor imagery (MI) classification in brain-computer interface (BCI) application. The effectiveness of CSP is highly affected by the frequency band and time window of EEG segments. Although numerous algorithms have been designed to optimize the spectral bands of CSP, most of them selected the time window in a heuristic way. This is likely to result in a suboptimal feature extraction since the time period when the brain responses to the mental tasks occurs may not be accurately detected. In this paper, we propose a novel algorithm, namely temporally constrained sparse group spatial pattern (TSGSP), for the simultaneous optimization of filter bands and time window within CSP to further boost classification accuracy of MI EEG. Specifically, spectrum-specific signals are first derived by bandpass filtering from raw EEG data at a set of overlapping filter bands. Each of the spectrum-specific signals is further segmented into multiple subseries using sliding window approach. We then devise a joint sparse optimization of filter bands and time windows with temporal smoothness constraint to extract robust CSP features under a multitask learning framework. A linear support vector machine classifier is trained on the optimized EEG features to accurately identify the MI tasks. An experimental study is implemented on three public EEG datasets (BCI Competition III dataset IIIa, BCI Competition IV datasets IIa, and BCI Competition IV dataset IIb) to validate the effectiveness of TSGSP in comparison to several other competing methods. Superior classification performance (averaged accuracies are 88.5%, 83.3%, and 84.3% for the three datasets, respectively) based on the experimental results confirms that the proposed algorithm is a promising candidate for performance improvement of MI-based BCIs.
基于共同空间模式(CSP)的空间滤波已被广泛应用于脑-机接口(BCI)应用中的运动想象(MI)分类的脑电图(EEG)特征提取。CSP 的有效性高度受到 EEG 段的频段和时间窗口的影响。尽管已经设计了许多算法来优化 CSP 的谱带,但大多数算法都是以启发式的方式选择时间窗口。这可能导致特征提取效果不佳,因为大脑对心理任务做出反应的时间段可能无法被准确检测到。在本文中,我们提出了一种新的算法,即时间约束稀疏分组空间模式(TSGSP),用于同时优化 CSP 中的滤波器带宽和时间窗口,以进一步提高 MI-EEG 的分类准确性。具体来说,首先通过带通滤波从原始 EEG 数据中在一组重叠的滤波器带宽内得到特定于频谱的信号。然后,使用滑动窗口方法将每个频谱特定的信号进一步分割成多个子序列。接着,我们设计了一个联合稀疏优化滤波器带宽和时间窗口的方法,并在多任务学习框架下施加时间平滑约束,以提取稳健的 CSP 特征。在线性支持向量机分类器上对优化后的 EEG 特征进行训练,以准确识别 MI 任务。在三个公共 EEG 数据集(BCI 竞赛 III 数据集 IIIa、BCI 竞赛 IV 数据集 IIa 和 BCI 竞赛 IV 数据集 IIb)上进行了实验研究,将 TSGSP 与其他几种竞争方法进行了比较,验证了其有效性。基于实验结果的分类性能(三个数据集的平均准确率分别为 88.5%、83.3%和 84.3%)证实了该算法是提高基于 MI 的 BCI 性能的一个有前途的候选方案。