Department of Electrical and Computer Engineering, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
IEEE Trans Neural Syst Rehabil Eng. 2011 Jun;19(3):221-31. doi: 10.1109/TNSRE.2011.2116125. Epub 2011 Feb 22.
In this paper, we propose a clustering linear discriminant analysis algorithm (CLDA) to accurately decode hand movement directions from a small number of training trials for magnetoencephalography-based brain computer interfaces (BCIs). CLDA first applies a spectral clustering algorithm to automatically partition the BCI features into several groups where the within-group correlation is maximized and the between-group correlation is minimized. As such, the covariance matrix of all features can be approximated as a block diagonal matrix, thereby facilitating us to accurately extract the correlation information required by movement decoding from a small set of training data. The efficiency of the proposed CLDA algorithm is theoretically studied and an error bound is derived. Our experiment on movement decoding of five human subjects demonstrates that CLDA achieves superior decoding accuracy over other traditional approaches. The average accuracy of CLDA is 87% for single-trial movement decoding of four directions (i.e., up, down, left, and right).
在本文中,我们提出了一种聚类线性判别分析算法(CLDA),以从基于脑机接口(BCI)的少量训练试验中准确解码手部运动方向。CLDA 首先应用谱聚类算法将 BCI 特征自动划分为几个组,其中组内相关性最大化,组间相关性最小化。这样,所有特征的协方差矩阵可以近似为一个块对角矩阵,从而使我们能够从一小部分训练数据中准确提取运动解码所需的相关信息。理论上研究了所提出的 CLDA 算法的效率,并得出了误差界。我们对五名人类受试者的运动解码实验表明,CLDA 优于其他传统方法实现了更高的解码精度。CLDA 在对四个方向(即上、下、左、右)的单次运动解码中的平均准确率为 87%。