Ince Nuri Firat, Arica Sami, Tewfik Ahmed
Department of Electrical and Electronics Engineering, University of Cukurova, Adana 01330, Turkey.
J Neural Eng. 2006 Sep;3(3):235-44. doi: 10.1088/1741-2560/3/3/006. Epub 2006 Jul 20.
We describe a new technique for the classification of motor imagery electroencephalogram (EEG) recordings in a brain computer interface (BCI) task. The technique is based on an adaptive time-frequency analysis of EEG signals computed using local discriminant bases (LDB) derived from local cosine packets (LCP). In an offline step, the EEG data obtained from the C(3)/C(4) electrode locations of the standard 10/20 system is adaptively segmented in time, over a non-dyadic grid by maximizing the probabilistic distances between expansion coefficients corresponding to left and right hand movement imagery. This is followed by a frequency domain clustering procedure in each adapted time segment to maximize the discrimination power of the resulting time-frequency features. Then, the most discriminant features from the resulting arbitrarily segmented time-frequency plane are sorted. A principal component analysis (PCA) step is applied to reduce the dimensionality of the feature space. This reduced feature set is finally fed to a linear discriminant for classification. The online step simply computes the reduced dimensionality features determined by the offline step and feeds them to the linear discriminant. We provide experimental data to show that the method can adapt to physio-anatomical differences, subject-specific and hemisphere-specific motor imagery patterns. The algorithm was applied to all nine subjects of the BCI Competition 2002. The classification performance of the proposed algorithm varied between 70% and 92.6% across subjects using just two electrodes. The average classification accuracy was 80.6%. For comparison, we also implemented an adaptive autoregressive model based classification procedure that achieved an average error rate of 76.3% on the same subjects, and higher error rates than the proposed approach on each individual subject.
我们描述了一种在脑机接口(BCI)任务中对运动想象脑电图(EEG)记录进行分类的新技术。该技术基于对EEG信号的自适应时频分析,使用从局部余弦包(LCP)导出的局部判别基(LDB)来计算。在离线步骤中,从标准10/20系统的C(3)/C(4)电极位置获得的EEG数据在时间上通过非二进网格进行自适应分割,通过最大化对应于左手和右手运动想象的扩展系数之间的概率距离。接下来,在每个自适应时间段内进行频域聚类过程,以最大化所得时频特征的判别能力。然后,对所得任意分割的时频平面中最具判别力的特征进行排序。应用主成分分析(PCA)步骤来降低特征空间的维度。这个降维后的特征集最终被输入到线性判别器进行分类。在线步骤只需计算由离线步骤确定的降维特征,并将它们输入到线性判别器。我们提供实验数据表明该方法可以适应生理解剖差异、个体特异性和半球特异性的运动想象模式。该算法应用于2002年BCI竞赛的所有九名受试者。使用仅两个电极时,所提出算法的分类性能在不同受试者之间在70%至9