Lu Na, Yin Tao
State Key Laboratory for Manufacturing Systems Engineering, Systems Engineering Institute, Xi'an Jiaotong University, Xi'an, Shaanxi, China.
Vision Microsystems Co., Ltd, Shanghai, China.
J Neurosci Methods. 2015 Jul 15;249:41-9. doi: 10.1016/j.jneumeth.2015.03.031. Epub 2015 Apr 3.
Brain activities could be measured by devices like EEG, MEG, MRI etc. in terms of electric or magnetic signal, which could provide information from three domains, i.e., time, frequency and space. Combinatory analysis of these features could definitely help to improve the classification performance on brain activities. NMF (nonnegative matrix factorization) has been widely applied in pattern extraction tasks (e.g., face recognition, gene data analysis) which could provide physically meaningful explanation of the data. However, brain signals also take negative values, so only spectral feature has been employed in existing NMF studies for brain computer interface. In addition, sparsity is an intrinsic characteristic of electric signals.
To incorporate sparsity constraint and enable analysis of time domain feature using NMF, a new solution for motor imagery classification is developed, which combinatorially analyzes the ERP (event related potential, time domain) and ERSP (event related spectral perturbation, frequency domain) features via a modified mixed alternating least square based NMF method (MALS-NMF for short).
Extensive experiments have verified the effectivity the proposed method. The results also showed that imposing sparsity constraint on the coefficient matrix in ERP factorization and basis matrix in ERSP factorization could better improve the algorithm performance.
Comparisons with other eight representative methods have further verified the superiority of the proposed method.
The MALS-NMF method is an effective solution for motor imagery classification and has shed some new light into the field of brain dynamics pattern analysis.
脑活动可以通过脑电图(EEG)、脑磁图(MEG)、磁共振成像(MRI)等设备,根据电信号或磁信号进行测量,这些信号可以提供来自时间、频率和空间三个领域的信息。对这些特征进行组合分析肯定有助于提高脑活动的分类性能。非负矩阵分解(NMF)已广泛应用于模式提取任务(如人脸识别、基因数据分析),它可以对数据提供具有物理意义的解释。然而,脑信号也会取负值,因此在现有的用于脑机接口的NMF研究中仅采用了频谱特征。此外,稀疏性是电信号的一个固有特性。
为了纳入稀疏性约束并能够使用NMF分析时域特征,开发了一种用于运动想象分类的新解决方案,该方案通过一种基于改进的混合交替最小二乘法的NMF方法(简称为MALS-NMF)对事件相关电位(ERP,时域)和事件相关频谱扰动(ERSP,频域)特征进行组合分析。
大量实验验证了所提方法的有效性。结果还表明,在ERP分解中的系数矩阵和ERSP分解中的基矩阵上施加稀疏性约束可以更好地提高算法性能。
与其他八种代表性方法的比较进一步验证了所提方法的优越性。
MALS-NMF方法是运动想象分类的一种有效解决方案,为脑动力学模式分析领域提供了一些新的思路。