Yang Huijuan, Sakhavi Siavash, Ang Kai Keng, Guan Cuntai
Annu Int Conf IEEE Eng Med Biol Soc. 2015;2015:2620-3. doi: 10.1109/EMBC.2015.7318929.
Learning the deep structures and unknown correlations is important for the detection of motor imagery of EEG signals (MI-EEG). This study investigates the use of convolutional neural networks (CNNs) for the classification of multi-class MI-EEG signals. Augmented common spatial pattern (ACSP) features are generated based on pair-wise projection matrices, which covers various frequency ranges. We propose a frequency complementary feature map selection (FCMS) scheme by constraining the dependency among frequency bands. Experiments are conducted on BCI competition IV dataset IIa with 9 subjects. Averaged cross-validation accuracy of 68.45% and 69.27% is achieved for FCMS and all feature maps, respectively, which is significantly higher (4.53% and 5.34%) than random map selection and higher (1.44% and 2.26%) than filter-bank CSP (FBCSP). The results demonstrate that the CNNs are capable of learning discriminant, deep structure features for EEG classification without relying on the handcrafted features.
学习深层结构和未知相关性对于脑电图信号运动想象(MI-EEG)的检测至关重要。本研究探讨了卷积神经网络(CNN)在多类MI-EEG信号分类中的应用。基于成对投影矩阵生成增强共空间模式(ACSP)特征,其覆盖了各种频率范围。我们通过约束频带之间的相关性提出了一种频率互补特征图选择(FCMS)方案。在具有9名受试者的BCI竞赛IV数据集IIa上进行了实验。FCMS和所有特征图的平均交叉验证准确率分别达到68.45%和69.27%,显著高于随机图选择(分别高4.53%和5.34%)且高于滤波器组CSP(FBCSP)(分别高1.44%和2.26%)。结果表明,CNN能够学习用于脑电图分类的判别性深层结构特征,而无需依赖手工特征。